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Wikipedia

White noise

In signal processing, white noise is a random signal having equal intensity at different frequencies, giving it a constant power spectral density.[1] The term is used with this or similar meanings in many scientific and technical disciplines, including physics, acoustical engineering, telecommunications, and statistical forecasting. White noise refers to a statistical model for signals and signal sources, rather than to any specific signal. White noise draws its name from white light,[2] although light that appears white generally does not have a flat power spectral density over the visible band.

The waveform of a Gaussian white noise signal plotted on a graph
A "white noise" image

In discrete time, white noise is a discrete signal whose samples are regarded as a sequence of serially uncorrelated random variables with zero mean and finite variance; a single realization of white noise is a random shock. Depending on the context, one may also require that the samples be independent and have identical probability distribution (in other words independent and identically distributed random variables are the simplest representation of white noise).[3] In particular, if each sample has a normal distribution with zero mean, the signal is said to be additive white Gaussian noise.[4]

The samples of a white noise signal may be sequential in time, or arranged along one or more spatial dimensions. In digital image processing, the pixels of a white noise image are typically arranged in a rectangular grid, and are assumed to be independent random variables with uniform probability distribution over some interval. The concept can be defined also for signals spread over more complicated domains, such as a sphere or a torus.

Some "white noise" sound (very loud)

An infinite-bandwidth white noise signal is a purely theoretical construction. The bandwidth of white noise is limited in practice by the mechanism of noise generation, by the transmission medium and by finite observation capabilities. Thus, random signals are considered "white noise" if they are observed to have a flat spectrum over the range of frequencies that are relevant to the context. For an audio signal, the relevant range is the band of audible sound frequencies (between 20 and 20,000 Hz). Such a signal is heard by the human ear as a hissing sound, resembling the /h/ sound in a sustained aspiration. On the other hand, the "sh" sound /ʃ/ in "ash" is a colored noise because it has a formant structure. In music and acoustics, the term "white noise" may be used for any signal that has a similar hissing sound.

The term white noise is sometimes used in the context of phylogenetically based statistical methods to refer to a lack of phylogenetic pattern in comparative data.[5] It is sometimes used analogously in nontechnical contexts to mean "random talk without meaningful contents".[6][7]

Statistical properties edit

 
Spectrogram of pink noise (left) and white noise (right), shown with linear frequency axis (vertical) versus time axis (horizontal).

Any distribution of values is possible (although it must have zero DC component). Even a binary signal which can only take on the values 1 or -1 will be white if the sequence is statistically uncorrelated. Noise having a continuous distribution, such as a normal distribution, can of course be white.

It is often incorrectly assumed that Gaussian noise (i.e., noise with a Gaussian amplitude distribution – see normal distribution) necessarily refers to white noise, yet neither property implies the other. Gaussianity refers to the probability distribution with respect to the value, in this context the probability of the signal falling within any particular range of amplitudes, while the term 'white' refers to the way the signal power is distributed (i.e., independently) over time or among frequencies.

One form of white noise is the generalized mean-square derivative of the Wiener process or Brownian motion.

A generalization to random elements on infinite dimensional spaces, such as random fields, is the white noise measure.

Practical applications edit

Music edit

White noise is commonly used in the production of electronic music, usually either directly or as an input for a filter to create other types of noise signal. It is used extensively in audio synthesis, typically to recreate percussive instruments such as cymbals or snare drums which have high noise content in their frequency domain.[8] A simple example of white noise is a nonexistent radio station (static).

Electronics engineering edit

White noise is also used to obtain the impulse response of an electrical circuit, in particular of amplifiers and other audio equipment. It is not used for testing loudspeakers as its spectrum contains too great an amount of high-frequency content. Pink noise, which differs from white noise in that it has equal energy in each octave, is used for testing transducers such as loudspeakers and microphones.

Computing edit

White noise is used as the basis of some random number generators. For example, Random.org uses a system of atmospheric antennas to generate random digit patterns from sources that can be well-modeled by white noise.[9]

Tinnitus treatment edit

White noise is a common synthetic noise source used for sound masking by a tinnitus masker.[10] White noise machines and other white noise sources are sold as privacy enhancers and sleep aids (see music and sleep) and to mask tinnitus.[11] The Marpac Sleep-Mate was the first domestic use white noise machine built in 1962 by traveling salesman Jim Buckwalter.[12] Alternatively, the use of an FM radio tuned to unused frequencies ("static") is a simpler and more cost-effective source of white noise.[13] However, white noise generated from a common commercial radio receiver tuned to an unused frequency is extremely vulnerable to being contaminated with spurious signals, such as adjacent radio stations, harmonics from non-adjacent radio stations, electrical equipment in the vicinity of the receiving antenna causing interference, or even atmospheric events such as solar flares and especially lightning.

Work environment edit

The effects of white noise upon cognitive function are mixed. Recently, a small study found that white noise background stimulation improves cognitive functioning among secondary students with attention deficit hyperactivity disorder (ADHD), while decreasing performance of non-ADHD students.[14][15] Other work indicates it is effective in improving the mood and performance of workers by masking background office noise,[16] but decreases cognitive performance in complex card sorting tasks.[17]

Similarly, an experiment was carried out on sixty-six healthy participants to observe the benefits of using white noise in a learning environment. The experiment involved the participants identifying different images whilst having different sounds in the background. Overall the experiment showed that white noise does in fact have benefits in relation to learning. The experiments showed that white noise improved the participants' learning abilities and their recognition memory slightly.[18]

Mathematical definitions edit

White noise vector edit

A random vector (that is, a random variable with values in Rn) is said to be a white noise vector or white random vector if its components each have a probability distribution with zero mean and finite variance,[clarification needed] and are statistically independent: that is, their joint probability distribution must be the product of the distributions of the individual components.[19]

A necessary (but, in general, not sufficient) condition for statistical independence of two variables is that they be statistically uncorrelated; that is, their covariance is zero. Therefore, the covariance matrix R of the components of a white noise vector w with n elements must be an n by n diagonal matrix, where each diagonal element Rii is the variance of component wi; and the correlation matrix must be the n by n identity matrix.

If, in addition to being independent, every variable in w also has a normal distribution with zero mean and the same variance  , w is said to be a Gaussian white noise vector. In that case, the joint distribution of w is a multivariate normal distribution; the independence between the variables then implies that the distribution has spherical symmetry in n-dimensional space. Therefore, any orthogonal transformation of the vector will result in a Gaussian white random vector. In particular, under most types of discrete Fourier transform, such as FFT and Hartley, the transform W of w will be a Gaussian white noise vector, too; that is, the n Fourier coefficients of w will be independent Gaussian variables with zero mean and the same variance  .

The power spectrum P of a random vector w can be defined as the expected value of the squared modulus of each coefficient of its Fourier transform W, that is, Pi = E(|Wi|2). Under that definition, a Gaussian white noise vector will have a perfectly flat power spectrum, with Pi = σ2 for all i.

If w is a white random vector, but not a Gaussian one, its Fourier coefficients Wi will not be completely independent of each other; although for large n and common probability distributions the dependencies are very subtle, and their pairwise correlations can be assumed to be zero.

Often the weaker condition "statistically uncorrelated" is used in the definition of white noise, instead of "statistically independent". However, some of the commonly expected properties of white noise (such as flat power spectrum) may not hold for this weaker version. Under this assumption, the stricter version can be referred to explicitly as independent white noise vector.[20]: p.60  Other authors use strongly white and weakly white instead.[21]

An example of a random vector that is "Gaussian white noise" in the weak but not in the strong sense is   where   is a normal random variable with zero mean, and   is equal to   or to  , with equal probability. These two variables are uncorrelated and individually normally distributed, but they are not jointly normally distributed and are not independent. If   is rotated by 45 degrees, its two components will still be uncorrelated, but their distribution will no longer be normal.

In some situations, one may relax the definition by allowing each component of a white random vector   to have non-zero expected value  . In image processing especially, where samples are typically restricted to positive values, one often takes   to be one half of the maximum sample value. In that case, the Fourier coefficient   corresponding to the zero-frequency component (essentially, the average of the  ) will also have a non-zero expected value  ; and the power spectrum   will be flat only over the non-zero frequencies.

Discrete-time white noise edit

A discrete-time stochastic process   is a generalization of a random vector with a finite number of components to infinitely many components. A discrete-time stochastic process   is called white noise if its mean is equal to zero for all   , i.e.   and if the autocorrelation function   has a nonzero value only for  , i.e.  .[citation needed][clarification needed]

Continuous-time white noise edit

In order to define the notion of "white noise" in the theory of continuous-time signals, one must replace the concept of a "random vector" by a continuous-time random signal; that is, a random process that generates a function   of a real-valued parameter  .

Such a process is said to be white noise in the strongest sense if the value   for any time   is a random variable that is statistically independent of its entire history before  . A weaker definition requires independence only between the values   and   at every pair of distinct times   and  . An even weaker definition requires only that such pairs   and   be uncorrelated.[22] As in the discrete case, some authors adopt the weaker definition for "white noise", and use the qualifier independent to refer to either of the stronger definitions. Others use weakly white and strongly white to distinguish between them.

However, a precise definition of these concepts is not trivial, because some quantities that are finite sums in the finite discrete case must be replaced by integrals that may not converge. Indeed, the set of all possible instances of a signal   is no longer a finite-dimensional space  , but an infinite-dimensional function space. Moreover, by any definition a white noise signal   would have to be essentially discontinuous at every point; therefore even the simplest operations on  , like integration over a finite interval, require advanced mathematical machinery.

Some authors[citation needed][clarification needed] require each value   to be a real-valued random variable with expectation   and some finite variance  . Then the covariance   between the values at two times   and   is well-defined: it is zero if the times are distinct, and   if they are equal. However, by this definition, the integral

 

over any interval with positive width   would be simply the width times the expectation:  .[clarification needed] This property renders the concept inadequate as a model of "white noise" signals either in a physical or mathematical sense.[clarification needed]

Therefore, most authors define the signal   indirectly by specifying random values for the integrals of   and   over each interval  . In this approach, however, the value of   at an isolated time cannot be defined as a real-valued random variable[citation needed]. Also the covariance   becomes infinite when  ; and the autocorrelation function   must be defined as  , where   is some real constant and   is Dirac's "function".[clarification needed]

In this approach, one usually specifies that the integral   of   over an interval   is a real random variable with normal distribution, zero mean, and variance  ; and also that the covariance   of the integrals  ,   is  , where   is the width of the intersection   of the two intervals  . This model is called a Gaussian white noise signal (or process).

In the mathematical field known as white noise analysis, a Gaussian white noise   is defined as a stochastic tempered distribution, i.e. a random variable with values in the space   of tempered distributions. Analogous to the case for finite-dimensional random vectors, a probability law on the infinite-dimensional space   can be defined via its characteristic function (existence and uniqueness are guaranteed by an extension of the Bochner–Minlos theorem, which goes under the name Bochner–Minlos–Sazanov theorem); analogously to the case of the multivariate normal distribution  , which has characteristic function

 

the white noise   must satisfy

 

where   is the natural pairing of the tempered distribution   with the Schwartz function  , taken scenariowise for  , and  .

Mathematical applications edit

Time series analysis and regression edit

In statistics and econometrics one often assumes that an observed series of data values is the sum of the values generated by a deterministic linear process, depending on certain independent (explanatory) variables, and on a series of random noise values. Then regression analysis is used to infer the parameters of the model process from the observed data, e.g. by ordinary least squares, and to test the null hypothesis that each of the parameters is zero against the alternative hypothesis that it is non-zero. Hypothesis testing typically assumes that the noise values are mutually uncorrelated with zero mean and have the same Gaussian probability distribution – in other words, that the noise is Gaussian white (not just white). If there is non-zero correlation between the noise values underlying different observations then the estimated model parameters are still unbiased, but estimates of their uncertainties (such as confidence intervals) will be biased (not accurate on average). This is also true if the noise is heteroskedastic – that is, if it has different variances for different data points.

Alternatively, in the subset of regression analysis known as time series analysis there are often no explanatory variables other than the past values of the variable being modeled (the dependent variable). In this case the noise process is often modeled as a moving average process, in which the current value of the dependent variable depends on current and past values of a sequential white noise process.

Random vector transformations edit

These two ideas are crucial in applications such as channel estimation and channel equalization in communications and audio. These concepts are also used in data compression.

In particular, by a suitable linear transformation (a coloring transformation), a white random vector can be used to produce a "non-white" random vector (that is, a list of random variables) whose elements have a prescribed covariance matrix. Conversely, a random vector with known covariance matrix can be transformed into a white random vector by a suitable whitening transformation.

Generation edit

White noise may be generated digitally with a digital signal processor, microprocessor, or microcontroller. Generating white noise typically entails feeding an appropriate stream of random numbers to a digital-to-analog converter. The quality of the white noise will depend on the quality of the algorithm used.[23]

Informal use edit

The term is sometimes used as a colloquialism to describe a backdrop of ambient sound, creating an indistinct or seamless commotion. Following are some examples:

  • Chatter from multiple conversations within the acoustics of a confined space.
  • The pleonastic jargon used by politicians to mask a point that they don't want noticed.[24]
  • Music that is disagreeable, harsh, dissonant or discordant with no melody.

The term can also be used metaphorically, as in the novel White Noise (1985) by Don DeLillo which explores the symptoms of modern culture that came together so as to make it difficult for an individual to actualize their ideas and personality.

See also edit

References edit

  1. ^ Carter, Mancini, Bruce, Ron (2009). Op Amps for Everyone. Texas Instruments. pp. 10–11. ISBN 978-0-08-094948-2.{{cite book}}: CS1 maint: multiple names: authors list (link)
  2. ^ Stein, Michael L. (1999). Interpolation of Spatial Data: Some Theory for Kriging. Springer Series in Statistics. Springer. p. 40. doi:10.1007/978-1-4612-1494-6. ISBN 978-1-4612-7166-6. white light is approximately an equal mixture of all visible frequencies of light, which was demonstrated by Isaac Newton
  3. ^ Stein, Michael L. (1999). Interpolation of Spatial Data: Some Theory for Kriging. Springer Series in Statistics. Springer. p. 40. doi:10.1007/978-1-4612-1494-6. ISBN 978-1-4612-7166-6. The best-known generalized process is white noise, which can be thought of as a continuous time analogue to a sequence of independent and identically distributed observations.
  4. ^ Diebold, Frank (2007). Elements of Forecasting (Fourth ed.).
  5. ^ Fusco, G; Garland, T. Jr; Hunt, G; Hughes, NC (2011). "Developmental trait evolution in trilobites". Evolution. 66 (2): 314–329. doi:10.1111/j.1558-5646.2011.01447.x. PMID 22276531. S2CID 14726662.
  6. ^ Claire Shipman (2005), Good Morning America: "The political rhetoric on Social Security is white noise." Said on ABC's Good Morning America TV show, January 11, 2005.
  7. ^ Don DeLillo (1985), White Noise
  8. ^ Clark, Dexxter. "Did you know all these white noise secrets? (music production tips)". www.learnhowtoproducemusic.com. Retrieved 2022-07-25.
  9. ^ O'Connell, Pamela LiCalzi (8 April 2004). . The New York Times. Archived from the original on 26 July 2009. Retrieved 25 July 2022.
  10. ^ Jastreboff, P. J. (2000). "Tinnitus Habituation Therapy (THT) and Tinnitus Retraining Therapy (TRT)". Tinnitus Handbook. San Diego: Singular. pp. 357–376.
  11. ^ López, HH; Bracha, AS; Bracha, HS (September 2002). "Evidence based complementary intervention for insomnia" (PDF). Hawaii Med J. 61 (9): 192, 213. PMID 12422383.
  12. ^ Green, Penelope (2018-12-27). "The Sound of Silence". The New York Times. ISSN 0362-4331. Retrieved 2021-05-20.
  13. ^ Noell, Courtney A; William L Meyerhoff (February 2003). "Tinnitus. Diagnosis and treatment of this elusive symptom". Geriatrics. 58 (2): 28–34. ISSN 0016-867X. PMID 12596495.
  14. ^ Soderlund, Goran; Sverker Sikstrom; Jan Loftesnes; Edmund Sonuga Barke (2010). "The effects of background white noise on memory performance in inattentive school children". Behavioral and Brain Functions. 6 (1): 55. doi:10.1186/1744-9081-6-55. PMC 2955636. PMID 20920224.
  15. ^ Söderlund, Göran; Sverker Sikström; Andrew Smart (2007). "Listen to the noise: Noise is beneficial for cognitive performance in ADHD". Journal of Child Psychology and Psychiatry. 48 (8): 840–847. CiteSeerX 10.1.1.452.530. doi:10.1111/j.1469-7610.2007.01749.x. ISSN 0021-9630. PMID 17683456.
  16. ^ Loewen, Laura J.; Peter Suedfeld (1992-05-01). "Cognitive and Arousal Effects of Masking Office Noise". Environment and Behavior. 24 (3): 381–395. doi:10.1177/0013916592243006. S2CID 144443528.
  17. ^ Baker, Mary Anne; Dennis H. Holding (July 1993). "The effects of noise and speech on cognitive task performance". Journal of General Psychology. 120 (3): 339–355. doi:10.1080/00221309.1993.9711152. ISSN 0022-1309. PMID 8138798.
  18. ^ Rausch, V. H. (2014). White noise improves learning by modulating activity in dopaminergic midbrain regions and right superior temporal sulcus . Journal of cognitive neuroscience, 1469-1480
  19. ^ Jeffrey A. Fessler (1998), Technical report 314, Dept. of Electrical Engineering and Computer Science, Univ. of Michigan. (PDF)
  20. ^ Eric Zivot and Jiahui Wang (2006), Modeling Financial Time Series with S-PLUS. Second Edition. (PDF)
  21. ^ Francis X. Diebold (2007), Elements of Forecasting, 4th edition. (PDF)
  22. ^ White noise process 2016-09-11 at the Wayback Machine. By Econterms via About.com. Accessed on 2013-02-12.
  23. ^ Matt Donadio. (PDF). Archived from the original (PDF) on 2021-02-24. Retrieved 2012-09-19.
  24. ^ white noise, Merriam-Webster, retrieved 2022-05-06

External links edit

white, noise, other, uses, white, noise, signal, processing, white, noise, random, signal, having, equal, intensity, different, frequencies, giving, constant, power, spectral, density, term, used, with, this, similar, meanings, many, scientific, technical, dis. For other uses see White Noise In signal processing white noise is a random signal having equal intensity at different frequencies giving it a constant power spectral density 1 The term is used with this or similar meanings in many scientific and technical disciplines including physics acoustical engineering telecommunications and statistical forecasting White noise refers to a statistical model for signals and signal sources rather than to any specific signal White noise draws its name from white light 2 although light that appears white generally does not have a flat power spectral density over the visible band The waveform of a Gaussian white noise signal plotted on a graph A white noise imageIn discrete time white noise is a discrete signal whose samples are regarded as a sequence of serially uncorrelated random variables with zero mean and finite variance a single realization of white noise is a random shock Depending on the context one may also require that the samples be independent and have identical probability distribution in other words independent and identically distributed random variables are the simplest representation of white noise 3 In particular if each sample has a normal distribution with zero mean the signal is said to be additive white Gaussian noise 4 The samples of a white noise signal may be sequential in time or arranged along one or more spatial dimensions In digital image processing the pixels of a white noise image are typically arranged in a rectangular grid and are assumed to be independent random variables with uniform probability distribution over some interval The concept can be defined also for signals spread over more complicated domains such as a sphere or a torus source source Some white noise sound very loud An infinite bandwidth white noise signal is a purely theoretical construction The bandwidth of white noise is limited in practice by the mechanism of noise generation by the transmission medium and by finite observation capabilities Thus random signals are considered white noise if they are observed to have a flat spectrum over the range of frequencies that are relevant to the context For an audio signal the relevant range is the band of audible sound frequencies between 20 and 20 000 Hz Such a signal is heard by the human ear as a hissing sound resembling the h sound in a sustained aspiration On the other hand the sh sound ʃ in ash is a colored noise because it has a formant structure In music and acoustics the term white noise may be used for any signal that has a similar hissing sound The term white noise is sometimes used in the context of phylogenetically based statistical methods to refer to a lack of phylogenetic pattern in comparative data 5 It is sometimes used analogously in nontechnical contexts to mean random talk without meaningful contents 6 7 Contents 1 Statistical properties 2 Practical applications 2 1 Music 2 2 Electronics engineering 2 3 Computing 2 4 Tinnitus treatment 2 5 Work environment 3 Mathematical definitions 3 1 White noise vector 3 2 Discrete time white noise 3 3 Continuous time white noise 4 Mathematical applications 4 1 Time series analysis and regression 4 2 Random vector transformations 5 Generation 6 Informal use 7 See also 8 References 9 External linksStatistical properties editThis section does not cite any sources Please help improve this section by adding citations to reliable sources Unsourced material may be challenged and removed January 2022 Learn how and when to remove this template message nbsp Spectrogram of pink noise left and white noise right shown with linear frequency axis vertical versus time axis horizontal Any distribution of values is possible although it must have zero DC component Even a binary signal which can only take on the values 1 or 1 will be white if the sequence is statistically uncorrelated Noise having a continuous distribution such as a normal distribution can of course be white It is often incorrectly assumed that Gaussian noise i e noise with a Gaussian amplitude distribution see normal distribution necessarily refers to white noise yet neither property implies the other Gaussianity refers to the probability distribution with respect to the value in this context the probability of the signal falling within any particular range of amplitudes while the term white refers to the way the signal power is distributed i e independently over time or among frequencies One form of white noise is the generalized mean square derivative of the Wiener process or Brownian motion A generalization to random elements on infinite dimensional spaces such as random fields is the white noise measure Practical applications editThis section needs additional citations for verification Please help improve this article by adding citations to reliable sources in this section Unsourced material may be challenged and removed January 2022 Learn how and when to remove this template message Music edit White noise is commonly used in the production of electronic music usually either directly or as an input for a filter to create other types of noise signal It is used extensively in audio synthesis typically to recreate percussive instruments such as cymbals or snare drums which have high noise content in their frequency domain 8 A simple example of white noise is a nonexistent radio station static Electronics engineering edit White noise is also used to obtain the impulse response of an electrical circuit in particular of amplifiers and other audio equipment It is not used for testing loudspeakers as its spectrum contains too great an amount of high frequency content Pink noise which differs from white noise in that it has equal energy in each octave is used for testing transducers such as loudspeakers and microphones Computing edit White noise is used as the basis of some random number generators For example Random org uses a system of atmospheric antennas to generate random digit patterns from sources that can be well modeled by white noise 9 Tinnitus treatment edit White noise is a common synthetic noise source used for sound masking by a tinnitus masker 10 White noise machines and other white noise sources are sold as privacy enhancers and sleep aids see music and sleep and to mask tinnitus 11 The Marpac Sleep Mate was the first domestic use white noise machine built in 1962 by traveling salesman Jim Buckwalter 12 Alternatively the use of an FM radio tuned to unused frequencies static is a simpler and more cost effective source of white noise 13 However white noise generated from a common commercial radio receiver tuned to an unused frequency is extremely vulnerable to being contaminated with spurious signals such as adjacent radio stations harmonics from non adjacent radio stations electrical equipment in the vicinity of the receiving antenna causing interference or even atmospheric events such as solar flares and especially lightning Work environment edit The effects of white noise upon cognitive function are mixed Recently a small study found that white noise background stimulation improves cognitive functioning among secondary students with attention deficit hyperactivity disorder ADHD while decreasing performance of non ADHD students 14 15 Other work indicates it is effective in improving the mood and performance of workers by masking background office noise 16 but decreases cognitive performance in complex card sorting tasks 17 Similarly an experiment was carried out on sixty six healthy participants to observe the benefits of using white noise in a learning environment The experiment involved the participants identifying different images whilst having different sounds in the background Overall the experiment showed that white noise does in fact have benefits in relation to learning The experiments showed that white noise improved the participants learning abilities and their recognition memory slightly 18 Mathematical definitions editWhite noise vector edit A random vector that is a random variable with values in Rn is said to be a white noise vector or white random vector if its components each have a probability distribution with zero mean and finite variance clarification needed and are statistically independent that is their joint probability distribution must be the product of the distributions of the individual components 19 A necessary but in general not sufficient condition for statistical independence of two variables is that they be statistically uncorrelated that is their covariance is zero Therefore the covariance matrix R of the components of a white noise vector w with n elements must be an n by n diagonal matrix where each diagonal element Rii is the variance of component wi and the correlation matrix must be the n by n identity matrix If in addition to being independent every variable in w also has a normal distribution with zero mean and the same variance s2 displaystyle sigma 2 nbsp w is said to be a Gaussian white noise vector In that case the joint distribution of w is a multivariate normal distribution the independence between the variables then implies that the distribution has spherical symmetry in n dimensional space Therefore any orthogonal transformation of the vector will result in a Gaussian white random vector In particular under most types of discrete Fourier transform such as FFT and Hartley the transform W of w will be a Gaussian white noise vector too that is the n Fourier coefficients of w will be independent Gaussian variables with zero mean and the same variance s2 displaystyle sigma 2 nbsp The power spectrum P of a random vector w can be defined as the expected value of the squared modulus of each coefficient of its Fourier transform W that is Pi E Wi 2 Under that definition a Gaussian white noise vector will have a perfectly flat power spectrum with Pi s2 for all i If w is a white random vector but not a Gaussian one its Fourier coefficients Wi will not be completely independent of each other although for large n and common probability distributions the dependencies are very subtle and their pairwise correlations can be assumed to be zero Often the weaker condition statistically uncorrelated is used in the definition of white noise instead of statistically independent However some of the commonly expected properties of white noise such as flat power spectrum may not hold for this weaker version Under this assumption the stricter version can be referred to explicitly as independent white noise vector 20 p 60 Other authors use strongly white and weakly white instead 21 An example of a random vector that is Gaussian white noise in the weak but not in the strong sense is x x1 x2 displaystyle x x 1 x 2 nbsp where x1 displaystyle x 1 nbsp is a normal random variable with zero mean and x2 displaystyle x 2 nbsp is equal to x1 displaystyle x 1 nbsp or to x1 displaystyle x 1 nbsp with equal probability These two variables are uncorrelated and individually normally distributed but they are not jointly normally distributed and are not independent If x displaystyle x nbsp is rotated by 45 degrees its two components will still be uncorrelated but their distribution will no longer be normal In some situations one may relax the definition by allowing each component of a white random vector w displaystyle w nbsp to have non zero expected value m displaystyle mu nbsp In image processing especially where samples are typically restricted to positive values one often takes m displaystyle mu nbsp to be one half of the maximum sample value In that case the Fourier coefficient W0 displaystyle W 0 nbsp corresponding to the zero frequency component essentially the average of the wi displaystyle w i nbsp will also have a non zero expected value mn displaystyle mu sqrt n nbsp and the power spectrum P displaystyle P nbsp will be flat only over the non zero frequencies Discrete time white noise edit A discrete time stochastic process W n displaystyle W n nbsp is a generalization of a random vector with a finite number of components to infinitely many components A discrete time stochastic process W n displaystyle W n nbsp is called white noise if its mean is equal to zero for all n displaystyle n nbsp i e E W n 0 displaystyle operatorname E W n 0 nbsp and if the autocorrelation function RW n E W k n W k displaystyle R W n operatorname E W k n W k nbsp has a nonzero value only for n 0 displaystyle n 0 nbsp i e RW n s2d n displaystyle R W n sigma 2 delta n nbsp citation needed clarification needed Continuous time white noise edit In order to define the notion of white noise in the theory of continuous time signals one must replace the concept of a random vector by a continuous time random signal that is a random process that generates a function w displaystyle w nbsp of a real valued parameter t displaystyle t nbsp Such a process is said to be white noise in the strongest sense if the value w t displaystyle w t nbsp for any time t displaystyle t nbsp is a random variable that is statistically independent of its entire history before t displaystyle t nbsp A weaker definition requires independence only between the values w t1 displaystyle w t 1 nbsp and w t2 displaystyle w t 2 nbsp at every pair of distinct times t1 displaystyle t 1 nbsp and t2 displaystyle t 2 nbsp An even weaker definition requires only that such pairs w t1 displaystyle w t 1 nbsp and w t2 displaystyle w t 2 nbsp be uncorrelated 22 As in the discrete case some authors adopt the weaker definition for white noise and use the qualifier independent to refer to either of the stronger definitions Others use weakly white and strongly white to distinguish between them However a precise definition of these concepts is not trivial because some quantities that are finite sums in the finite discrete case must be replaced by integrals that may not converge Indeed the set of all possible instances of a signal w displaystyle w nbsp is no longer a finite dimensional space Rn displaystyle mathbb R n nbsp but an infinite dimensional function space Moreover by any definition a white noise signal w displaystyle w nbsp would have to be essentially discontinuous at every point therefore even the simplest operations on w displaystyle w nbsp like integration over a finite interval require advanced mathematical machinery Some authors citation needed clarification needed require each value w t displaystyle w t nbsp to be a real valued random variable with expectation m displaystyle mu nbsp and some finite variance s2 displaystyle sigma 2 nbsp Then the covariance E w t1 w t2 displaystyle mathrm E w t 1 cdot w t 2 nbsp between the values at two times t1 displaystyle t 1 nbsp and t2 displaystyle t 2 nbsp is well defined it is zero if the times are distinct and s2 displaystyle sigma 2 nbsp if they are equal However by this definition the integral W a a r aa rw t dt displaystyle W a a r int a a r w t dt nbsp over any interval with positive width r displaystyle r nbsp would be simply the width times the expectation rm displaystyle r mu nbsp clarification needed This property renders the concept inadequate as a model of white noise signals either in a physical or mathematical sense clarification needed Therefore most authors define the signal w displaystyle w nbsp indirectly by specifying random values for the integrals of w t displaystyle w t nbsp and w t 2 displaystyle w t 2 nbsp over each interval a a r displaystyle a a r nbsp In this approach however the value of w t displaystyle w t nbsp at an isolated time cannot be defined as a real valued random variable citation needed Also the covariance E w t1 w t2 displaystyle mathrm E w t 1 cdot w t 2 nbsp becomes infinite when t1 t2 displaystyle t 1 t 2 nbsp and the autocorrelation function R t1 t2 displaystyle mathrm R t 1 t 2 nbsp must be defined as Nd t1 t2 displaystyle N delta t 1 t 2 nbsp where N displaystyle N nbsp is some real constant and d displaystyle delta nbsp is Dirac s function clarification needed In this approach one usually specifies that the integral WI displaystyle W I nbsp of w t displaystyle w t nbsp over an interval I a b displaystyle I a b nbsp is a real random variable with normal distribution zero mean and variance b a s2 displaystyle b a sigma 2 nbsp and also that the covariance E WI WJ displaystyle mathrm E W I cdot W J nbsp of the integrals WI displaystyle W I nbsp WJ displaystyle W J nbsp is rs2 displaystyle r sigma 2 nbsp where r displaystyle r nbsp is the width of the intersection I J displaystyle I cap J nbsp of the two intervals I J displaystyle I J nbsp This model is called a Gaussian white noise signal or process In the mathematical field known as white noise analysis a Gaussian white noise w displaystyle w nbsp is defined as a stochastic tempered distribution i e a random variable with values in the space S R displaystyle mathcal S mathbb R nbsp of tempered distributions Analogous to the case for finite dimensional random vectors a probability law on the infinite dimensional space S R displaystyle mathcal S mathbb R nbsp can be defined via its characteristic function existence and uniqueness are guaranteed by an extension of the Bochner Minlos theorem which goes under the name Bochner Minlos Sazanov theorem analogously to the case of the multivariate normal distribution X Nn m S displaystyle X sim mathcal N n mu Sigma nbsp which has characteristic function k Rn E ei k X ei k m 12 k Sk displaystyle forall k in mathbb R n quad mathrm E mathrm e mathrm i langle k X rangle mathrm e mathrm i langle k mu rangle frac 1 2 langle k Sigma k rangle nbsp the white noise w W S R displaystyle w Omega to mathcal S mathbb R nbsp must satisfy f S R E ei w f e 12 f 22 displaystyle forall varphi in mathcal S mathbb R quad mathrm E mathrm e mathrm i langle w varphi rangle mathrm e frac 1 2 varphi 2 2 nbsp where w f displaystyle langle w varphi rangle nbsp is the natural pairing of the tempered distribution w w displaystyle w omega nbsp with the Schwartz function f displaystyle varphi nbsp taken scenariowise for w W displaystyle omega in Omega nbsp and f 22 R f x 2dx displaystyle varphi 2 2 int mathbb R vert varphi x vert 2 mathrm d x nbsp Mathematical applications editTime series analysis and regression edit In statistics and econometrics one often assumes that an observed series of data values is the sum of the values generated by a deterministic linear process depending on certain independent explanatory variables and on a series of random noise values Then regression analysis is used to infer the parameters of the model process from the observed data e g by ordinary least squares and to test the null hypothesis that each of the parameters is zero against the alternative hypothesis that it is non zero Hypothesis testing typically assumes that the noise values are mutually uncorrelated with zero mean and have the same Gaussian probability distribution in other words that the noise is Gaussian white not just white If there is non zero correlation between the noise values underlying different observations then the estimated model parameters are still unbiased but estimates of their uncertainties such as confidence intervals will be biased not accurate on average This is also true if the noise is heteroskedastic that is if it has different variances for different data points Alternatively in the subset of regression analysis known as time series analysis there are often no explanatory variables other than the past values of the variable being modeled the dependent variable In this case the noise process is often modeled as a moving average process in which the current value of the dependent variable depends on current and past values of a sequential white noise process Random vector transformations edit These two ideas are crucial in applications such as channel estimation and channel equalization in communications and audio These concepts are also used in data compression In particular by a suitable linear transformation a coloring transformation a white random vector can be used to produce a non white random vector that is a list of random variables whose elements have a prescribed covariance matrix Conversely a random vector with known covariance matrix can be transformed into a white random vector by a suitable whitening transformation Generation editWhite noise may be generated digitally with a digital signal processor microprocessor or microcontroller Generating white noise typically entails feeding an appropriate stream of random numbers to a digital to analog converter The quality of the white noise will depend on the quality of the algorithm used 23 Informal use editThe term is sometimes used as a colloquialism to describe a backdrop of ambient sound creating an indistinct or seamless commotion Following are some examples Chatter from multiple conversations within the acoustics of a confined space The pleonastic jargon used by politicians to mask a point that they don t want noticed 24 Music that is disagreeable harsh dissonant or discordant with no melody The term can also be used metaphorically as in the novel White Noise 1985 by Don DeLillo which explores the symptoms of modern culture that came together so as to make it difficult for an individual to actualize their ideas and personality See also editBochner Minlos theorem Brownian noise Dirac delta function Independent component analysis MyNoise Noise electronics Noise video Olfactory white Pink noise Principal component analysis Sound maskingReferences edit Carter Mancini Bruce Ron 2009 Op Amps for Everyone Texas Instruments pp 10 11 ISBN 978 0 08 094948 2 a href Template Cite book html title Template Cite book cite book a CS1 maint multiple names authors list link Stein Michael L 1999 Interpolation of Spatial Data Some Theory for Kriging Springer Series in Statistics Springer p 40 doi 10 1007 978 1 4612 1494 6 ISBN 978 1 4612 7166 6 white light is approximately an equal mixture of all visible frequencies of light which was demonstrated by Isaac Newton Stein Michael L 1999 Interpolation of Spatial Data Some Theory for Kriging Springer Series in Statistics Springer p 40 doi 10 1007 978 1 4612 1494 6 ISBN 978 1 4612 7166 6 The best known generalized process is white noise which can be thought of as a continuous time analogue to a sequence of independent and identically distributed observations Diebold Frank 2007 Elements of Forecasting Fourth ed Fusco G Garland T Jr Hunt G Hughes NC 2011 Developmental trait evolution in trilobites Evolution 66 2 314 329 doi 10 1111 j 1558 5646 2011 01447 x PMID 22276531 S2CID 14726662 Claire Shipman 2005 Good Morning America The political rhetoric on Social Security is white noise Said on ABC s Good Morning America TV show January 11 2005 Don DeLillo 1985 White Noise Clark Dexxter Did you know all these white noise secrets music production tips www learnhowtoproducemusic com Retrieved 2022 07 25 O Connell Pamela LiCalzi 8 April 2004 Lottery Numbers and Books With a Voice The New York Times Archived from the original on 26 July 2009 Retrieved 25 July 2022 Jastreboff P J 2000 Tinnitus Habituation Therapy THT and Tinnitus Retraining Therapy TRT Tinnitus Handbook San Diego Singular pp 357 376 Lopez HH Bracha AS Bracha HS September 2002 Evidence based complementary intervention for insomnia PDF Hawaii Med J 61 9 192 213 PMID 12422383 Green Penelope 2018 12 27 The Sound of Silence The New York Times ISSN 0362 4331 Retrieved 2021 05 20 Noell Courtney A William L Meyerhoff February 2003 Tinnitus Diagnosis and treatment of this elusive symptom Geriatrics 58 2 28 34 ISSN 0016 867X PMID 12596495 Soderlund Goran Sverker Sikstrom Jan Loftesnes Edmund Sonuga Barke 2010 The effects of background white noise on memory performance in inattentive school children Behavioral and Brain Functions 6 1 55 doi 10 1186 1744 9081 6 55 PMC 2955636 PMID 20920224 Soderlund Goran Sverker Sikstrom Andrew Smart 2007 Listen to the noise Noise is beneficial for cognitive performance in ADHD Journal of Child Psychology and Psychiatry 48 8 840 847 CiteSeerX 10 1 1 452 530 doi 10 1111 j 1469 7610 2007 01749 x ISSN 0021 9630 PMID 17683456 Loewen Laura J Peter Suedfeld 1992 05 01 Cognitive and Arousal Effects of Masking Office Noise Environment and Behavior 24 3 381 395 doi 10 1177 0013916592243006 S2CID 144443528 Baker Mary Anne Dennis H Holding July 1993 The effects of noise and speech on cognitive task performance Journal of General Psychology 120 3 339 355 doi 10 1080 00221309 1993 9711152 ISSN 0022 1309 PMID 8138798 Rausch V H 2014 White noise improves learning by modulating activity in dopaminergic midbrain regions and right superior temporal sulcus Journal of cognitive neuroscience 1469 1480 Jeffrey A Fessler 1998 On Transformations of Random Vectors Technical report 314 Dept of Electrical Engineering and Computer Science Univ of Michigan PDF Eric Zivot and Jiahui Wang 2006 Modeling Financial Time Series with S PLUS Second Edition PDF Francis X Diebold 2007 Elements of Forecasting 4th edition PDF White noise process Archived 2016 09 11 at the Wayback Machine By Econterms via About com Accessed on 2013 02 12 Matt Donadio How to Generate White Gaussian Noise PDF Archived from the original PDF on 2021 02 24 Retrieved 2012 09 19 white noise Merriam Webster retrieved 2022 05 06External links edit nbsp Wikimedia Commons has media related to White noise Retrieved from https en wikipedia org w index php title White noise amp oldid 1211654335, wikipedia, wiki, book, books, library,

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