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Discrete sine transform

In mathematics, the discrete sine transform (DST) is a Fourier-related transform similar to the discrete Fourier transform (DFT), but using a purely real matrix. It is equivalent to the imaginary parts of a DFT of roughly twice the length, operating on real data with odd symmetry (since the Fourier transform of a real and odd function is imaginary and odd), where in some variants the input and/or output data are shifted by half a sample.

A family of transforms composed of sine and sine hyperbolic functions exists. These transforms are made based on the natural vibration of thin square plates with different boundary conditions.[1]

The DST is related to the discrete cosine transform (DCT), which is equivalent to a DFT of real and even functions. See the DCT article for a general discussion of how the boundary conditions relate the various DCT and DST types. Generally, the DST is derived from the DCT by replacing the Neumann condition at x=0 with a Dirichlet condition.[2] Both the DCT and the DST were described by Nasir Ahmed, T. Natarajan, and K.R. Rao in 1974.[3][4] The type-I DST (DST-I) was later described by Anil K. Jain in 1976, and the type-II DST (DST-II) was then described by H.B. Kekra and J.K. Solanka in 1978.[5]

Applications

DSTs are widely employed in solving partial differential equations by spectral methods, where the different variants of the DST correspond to slightly different odd/even boundary conditions at the two ends of the array.

Informal overview

 
Illustration of the implicit even/odd extensions of DST input data, for N=9 data points (red dots), for the four most common types of DST (types I–IV).

Like any Fourier-related transform, discrete sine transforms (DSTs) express a function or a signal in terms of a sum of sinusoids with different frequencies and amplitudes. Like the discrete Fourier transform (DFT), a DST operates on a function at a finite number of discrete data points. The obvious distinction between a DST and a DFT is that the former uses only sine functions, while the latter uses both cosines and sines (in the form of complex exponentials). However, this visible difference is merely a consequence of a deeper distinction: a DST implies different boundary conditions than the DFT or other related transforms.

The Fourier-related transforms that operate on a function over a finite domain, such as the DFT or DST or a Fourier series, can be thought of as implicitly defining an extension of that function outside the domain. That is, once you write a function   as a sum of sinusoids, you can evaluate that sum at any  , even for   where the original   was not specified. The DFT, like the Fourier series, implies a periodic extension of the original function. A DST, like a sine transform, implies an odd extension of the original function.

However, because DSTs operate on finite, discrete sequences, two issues arise that do not apply for the continuous sine transform. First, one has to specify whether the function is even or odd at both the left and right boundaries of the domain (i.e. the min-n and max-n boundaries in the definitions below, respectively). Second, one has to specify around what point the function is even or odd. In particular, consider a sequence (a,b,c) of three equally spaced data points, and say that we specify an odd left boundary. There are two sensible possibilities: either the data is odd about the point prior to a, in which case the odd extension is (−c,−b,−a,0,a,b,c), or the data is odd about the point halfway between a and the previous point, in which case the odd extension is (−c,−b,−a,a,b,c)

These choices lead to all the standard variations of DSTs and also discrete cosine transforms (DCTs). Each boundary can be either even or odd (2 choices per boundary) and can be symmetric about a data point or the point halfway between two data points (2 choices per boundary), for a total of   possibilities. Half of these possibilities, those where the left boundary is odd, correspond to the 8 types of DST; the other half are the 8 types of DCT.

These different boundary conditions strongly affect the applications of the transform, and lead to uniquely useful properties for the various DCT types. Most directly, when using Fourier-related transforms to solve partial differential equations by spectral methods, the boundary conditions are directly specified as a part of the problem being solved.

Definition

Formally, the discrete sine transform is a linear, invertible function F : RN -> RN (where R denotes the set of real numbers), or equivalently an N × N square matrix. There are several variants of the DST with slightly modified definitions. The N real numbers x0,...,xN − 1 are transformed into the N real numbers X0,...,XN − 1 according to one of the formulas:

DST-I

 

The DST-I matrix is orthogonal (up to a scale factor).

A DST-I is exactly equivalent to a DFT of a real sequence that is odd around the zero-th and middle points, scaled by 1/2. For example, a DST-I of N=3 real numbers (a,b,c) is exactly equivalent to a DFT of eight real numbers (0,a,b,c,0,−c,−b,−a) (odd symmetry), scaled by 1/2. (In contrast, DST types II–IV involve a half-sample shift in the equivalent DFT.) This is the reason for the N + 1 in the denominator of the sine function: the equivalent DFT has 2(N+1) points and has 2π/2(N+1) in its sinusoid frequency, so the DST-I has π/(N+1) in its frequency.

Thus, the DST-I corresponds to the boundary conditions: xn is odd around n = −1 and odd around n=N; similarly for Xk.

DST-II

 

Some authors further multiply the XN − 1 term by 1/2 (see below for the corresponding change in DST-III). This makes the DST-II matrix orthogonal (up to a scale factor), but breaks the direct correspondence with a real-odd DFT of half-shifted input.

The DST-II implies the boundary conditions: xn is odd around n = −1/2 and odd around n = N − 1/2; Xk is odd around k = −1 and even around k = N − 1.

DST-III

 

Some authors further multiply the xN − 1 term by 2 (see above for the corresponding change in DST-II). This makes the DST-III matrix orthogonal (up to a scale factor), but breaks the direct correspondence with a real-odd DFT of half-shifted output.

The DST-III implies the boundary conditions: xn is odd around n = −1 and even around n = N − 1; Xk is odd around k = −1/2 and odd around k = N − 1/2.

DST-IV

 

The DST-IV matrix is orthogonal (up to a scale factor).

The DST-IV implies the boundary conditions: xn is odd around n = −1/2 and even around n = N − 1/2; similarly for Xk.

DST V–VIII

DST types I–IV are equivalent to real-odd DFTs of even order. In principle, there are actually four additional types of discrete sine transform (Martucci, 1994), corresponding to real-odd DFTs of logically odd order, which have factors of N+1/2 in the denominators of the sine arguments. However, these variants seem to be rarely used in practice.

Inverse transforms

The inverse of DST-I is DST-I multiplied by 2/(N + 1). The inverse of DST-IV is DST-IV multiplied by 2/N. The inverse of DST-II is DST-III multiplied by 2/N (and vice versa).

As for the DFT, the normalization factor in front of these transform definitions is merely a convention and differs between treatments. For example, some authors multiply the transforms by   so that the inverse does not require any additional multiplicative factor.

Computation

Although the direct application of these formulas would require O(N2) operations, it is possible to compute the same thing with only O(N log N) complexity by factorizing the computation similar to the fast Fourier transform (FFT). (One can also compute DSTs via FFTs combined with O(N) pre- and post-processing steps.)

A DST-III or DST-IV can be computed from a DCT-III or DCT-IV (see discrete cosine transform), respectively, by reversing the order of the inputs and flipping the sign of every other output, and vice versa for DST-II from DCT-II. In this way it follows that types II–IV of the DST require exactly the same number of arithmetic operations (additions and multiplications) as the corresponding DCT types.

References

  1. ^ Abedi, M.; Sun, B.; Zheng, Z. (July 2019). "A Sinusoidal-Hyperbolic Family of Transforms With Potential Applications in Compressive Sensing". IEEE Transactions on Image Processing. 28 (7): 3571–3583. Bibcode:2019ITIP...28.3571A. doi:10.1109/TIP.2019.2912355. PMID 31071031.
  2. ^ Britanak, Vladimir; Yip, Patrick C.; Rao, K. R. (2010). Discrete Cosine and Sine Transforms: General Properties, Fast Algorithms and Integer Approximations. Elsevier. pp. 35–6. ISBN 9780080464640.
  3. ^ Ahmed, Nasir; Natarajan, T.; Rao, K. R. (January 1974), "Discrete Cosine Transform" (PDF), IEEE Transactions on Computers, C-23 (1): 90–93, doi:10.1109/T-C.1974.223784
  4. ^ Ahmed, Nasir (January 1991). "How I Came Up With the Discrete Cosine Transform". Digital Signal Processing. 1 (1): 4–5. doi:10.1016/1051-2004(91)90086-Z.
  5. ^ Dhamija, Swati; Jain, Priyanka (September 2011). "Comparative Analysis for Discrete Sine Transform as a suitable method for noise estimation". International Journal of Computer Science. 8 (5): 162–164. Retrieved 4 November 2019 – via ResearchGate.

Bibliography

  • S. A. Martucci, "Symmetric convolution and the discrete sine and cosine transforms," IEEE Trans. Signal Process. SP-42, 1038–1051 (1994).
  • Matteo Frigo and Steven G. Johnson: FFTW, FFTW Home Page. A free (GPL) C library that can compute fast DSTs (types I–IV) in one or more dimensions, of arbitrary size. Also M. Frigo and S. G. Johnson, "The Design and Implementation of FFTW3," Proceedings of the IEEE 93 (2), 216–231 (2005).
  • Takuya Ooura: General Purpose FFT Package, FFT Package 1-dim / 2-dim. Free C & FORTRAN libraries for computing fast DSTs in one, two or three dimensions, power of 2 sizes.
  • Press, WH; Teukolsky, SA; Vetterling, WT; Flannery, BP (2007), "Section 12.4.1. Sine Transform", Numerical Recipes: The Art of Scientific Computing (3rd ed.), New York: Cambridge University Press, ISBN 978-0-521-88068-8.
  • R. Chivukula and Y. Reznik, "Fast Computing of Discrete Cosine and Sine Transforms of Types VI and VII," Proc. SPIE Vol. 8135, 2011.

discrete, sine, transform, mathematics, discrete, sine, transform, fourier, related, transform, similar, discrete, fourier, transform, using, purely, real, matrix, equivalent, imaginary, parts, roughly, twice, length, operating, real, data, with, symmetry, sin. In mathematics the discrete sine transform DST is a Fourier related transform similar to the discrete Fourier transform DFT but using a purely real matrix It is equivalent to the imaginary parts of a DFT of roughly twice the length operating on real data with odd symmetry since the Fourier transform of a real and odd function is imaginary and odd where in some variants the input and or output data are shifted by half a sample A family of transforms composed of sine and sine hyperbolic functions exists These transforms are made based on the natural vibration of thin square plates with different boundary conditions 1 The DST is related to the discrete cosine transform DCT which is equivalent to a DFT of real and even functions See the DCT article for a general discussion of how the boundary conditions relate the various DCT and DST types Generally the DST is derived from the DCT by replacing the Neumann condition at x 0 with a Dirichlet condition 2 Both the DCT and the DST were described by Nasir Ahmed T Natarajan and K R Rao in 1974 3 4 The type I DST DST I was later described by Anil K Jain in 1976 and the type II DST DST II was then described by H B Kekra and J K Solanka in 1978 5 Contents 1 Applications 2 Informal overview 3 Definition 3 1 DST I 3 2 DST II 3 3 DST III 3 4 DST IV 3 5 DST V VIII 3 6 Inverse transforms 3 7 Computation 4 References 5 BibliographyApplications EditDSTs are widely employed in solving partial differential equations by spectral methods where the different variants of the DST correspond to slightly different odd even boundary conditions at the two ends of the array Informal overview Edit Illustration of the implicit even odd extensions of DST input data for N 9 data points red dots for the four most common types of DST types I IV Like any Fourier related transform discrete sine transforms DSTs express a function or a signal in terms of a sum of sinusoids with different frequencies and amplitudes Like the discrete Fourier transform DFT a DST operates on a function at a finite number of discrete data points The obvious distinction between a DST and a DFT is that the former uses only sine functions while the latter uses both cosines and sines in the form of complex exponentials However this visible difference is merely a consequence of a deeper distinction a DST implies different boundary conditions than the DFT or other related transforms The Fourier related transforms that operate on a function over a finite domain such as the DFT or DST or a Fourier series can be thought of as implicitly defining an extension of that function outside the domain That is once you write a function f x displaystyle f x as a sum of sinusoids you can evaluate that sum at any x displaystyle x even for x displaystyle x where the original f x displaystyle f x was not specified The DFT like the Fourier series implies a periodic extension of the original function A DST like a sine transform implies an odd extension of the original function However because DSTs operate on finite discrete sequences two issues arise that do not apply for the continuous sine transform First one has to specify whether the function is even or odd at both the left and right boundaries of the domain i e the min n and max n boundaries in the definitions below respectively Second one has to specify around what point the function is even or odd In particular consider a sequence a b c of three equally spaced data points and say that we specify an odd left boundary There are two sensible possibilities either the data is odd about the point prior to a in which case the odd extension is c b a 0 a b c or the data is odd about the point halfway between a and the previous point in which case the odd extension is c b a a b c These choices lead to all the standard variations of DSTs and also discrete cosine transforms DCTs Each boundary can be either even or odd 2 choices per boundary and can be symmetric about a data point or the point halfway between two data points 2 choices per boundary for a total of 2 2 2 2 16 displaystyle 2 times 2 times 2 times 2 16 possibilities Half of these possibilities those where the left boundary is odd correspond to the 8 types of DST the other half are the 8 types of DCT These different boundary conditions strongly affect the applications of the transform and lead to uniquely useful properties for the various DCT types Most directly when using Fourier related transforms to solve partial differential equations by spectral methods the boundary conditions are directly specified as a part of the problem being solved Definition EditFormally the discrete sine transform is a linear invertible function F RN gt RN where R denotes the set of real numbers or equivalently an N N square matrix There are several variants of the DST with slightly modified definitions The N real numbers x0 xN 1 are transformed into the N real numbers X0 XN 1 according to one of the formulas DST I Edit X k n 0 N 1 x n sin p N 1 n 1 k 1 k 0 N 1 displaystyle X k sum n 0 N 1 x n sin left frac pi N 1 n 1 k 1 right quad quad k 0 dots N 1 The DST I matrix is orthogonal up to a scale factor A DST I is exactly equivalent to a DFT of a real sequence that is odd around the zero th and middle points scaled by 1 2 For example a DST I of N 3 real numbers a b c is exactly equivalent to a DFT of eight real numbers 0 a b c 0 c b a odd symmetry scaled by 1 2 In contrast DST types II IV involve a half sample shift in the equivalent DFT This is the reason for the N 1 in the denominator of the sine function the equivalent DFT has 2 N 1 points and has 2p 2 N 1 in its sinusoid frequency so the DST I has p N 1 in its frequency Thus the DST I corresponds to the boundary conditions xn is odd around n 1 and odd around n N similarly for Xk DST II Edit X k n 0 N 1 x n sin p N n 1 2 k 1 k 0 N 1 displaystyle X k sum n 0 N 1 x n sin left frac pi N left n frac 1 2 right k 1 right quad quad k 0 dots N 1 Some authors further multiply the XN 1 term by 1 2 see below for the corresponding change in DST III This makes the DST II matrix orthogonal up to a scale factor but breaks the direct correspondence with a real odd DFT of half shifted input The DST II implies the boundary conditions xn is odd around n 1 2 and odd around n N 1 2 Xk is odd around k 1 and even around k N 1 DST III Edit X k 1 k 2 x N 1 n 0 N 2 x n sin p N n 1 k 1 2 k 0 N 1 displaystyle X k frac 1 k 2 x N 1 sum n 0 N 2 x n sin left frac pi N n 1 left k frac 1 2 right right quad quad k 0 dots N 1 Some authors further multiply the xN 1 term by 2 see above for the corresponding change in DST II This makes the DST III matrix orthogonal up to a scale factor but breaks the direct correspondence with a real odd DFT of half shifted output The DST III implies the boundary conditions xn is odd around n 1 and even around n N 1 Xk is odd around k 1 2 and odd around k N 1 2 DST IV Edit X k n 0 N 1 x n sin p N n 1 2 k 1 2 k 0 N 1 displaystyle X k sum n 0 N 1 x n sin left frac pi N left n frac 1 2 right left k frac 1 2 right right quad quad k 0 dots N 1 The DST IV matrix is orthogonal up to a scale factor The DST IV implies the boundary conditions xn is odd around n 1 2 and even around n N 1 2 similarly for Xk DST V VIII Edit DST types I IV are equivalent to real odd DFTs of even order In principle there are actually four additional types of discrete sine transform Martucci 1994 corresponding to real odd DFTs of logically odd order which have factors of N 1 2 in the denominators of the sine arguments However these variants seem to be rarely used in practice Inverse transforms Edit The inverse of DST I is DST I multiplied by 2 N 1 The inverse of DST IV is DST IV multiplied by 2 N The inverse of DST II is DST III multiplied by 2 N and vice versa As for the DFT the normalization factor in front of these transform definitions is merely a convention and differs between treatments For example some authors multiply the transforms by 2 N displaystyle sqrt 2 N so that the inverse does not require any additional multiplicative factor Computation Edit Although the direct application of these formulas would require O N2 operations it is possible to compute the same thing with only O N log N complexity by factorizing the computation similar to the fast Fourier transform FFT One can also compute DSTs via FFTs combined with O N pre and post processing steps A DST III or DST IV can be computed from a DCT III or DCT IV see discrete cosine transform respectively by reversing the order of the inputs and flipping the sign of every other output and vice versa for DST II from DCT II In this way it follows that types II IV of the DST require exactly the same number of arithmetic operations additions and multiplications as the corresponding DCT types References Edit Abedi M Sun B Zheng Z July 2019 A Sinusoidal Hyperbolic Family of Transforms With Potential Applications in Compressive Sensing IEEE Transactions on Image Processing 28 7 3571 3583 Bibcode 2019ITIP 28 3571A doi 10 1109 TIP 2019 2912355 PMID 31071031 Britanak Vladimir Yip Patrick C Rao K R 2010 Discrete Cosine and Sine Transforms General Properties Fast Algorithms and Integer Approximations Elsevier pp 35 6 ISBN 9780080464640 Ahmed Nasir Natarajan T Rao K R January 1974 Discrete Cosine Transform PDF IEEE Transactions on Computers C 23 1 90 93 doi 10 1109 T C 1974 223784 Ahmed Nasir January 1991 How I Came Up With the Discrete Cosine Transform Digital Signal Processing 1 1 4 5 doi 10 1016 1051 2004 91 90086 Z Dhamija Swati Jain Priyanka September 2011 Comparative Analysis for Discrete Sine Transform as a suitable method for noise estimation International Journal of Computer Science 8 5 162 164 Retrieved 4 November 2019 via ResearchGate Bibliography EditS A Martucci Symmetric convolution and the discrete sine and cosine transforms IEEE Trans Signal Process SP 42 1038 1051 1994 Matteo Frigo and Steven G Johnson FFTW FFTW Home Page A free GPL C library that can compute fast DSTs types I IV in one or more dimensions of arbitrary size Also M Frigo and S G Johnson The Design and Implementation of FFTW3 Proceedings of the IEEE 93 2 216 231 2005 Takuya Ooura General Purpose FFT Package FFT Package 1 dim 2 dim Free C amp FORTRAN libraries for computing fast DSTs in one two or three dimensions power of 2 sizes Press WH Teukolsky SA Vetterling WT Flannery BP 2007 Section 12 4 1 Sine Transform Numerical Recipes The Art of Scientific Computing 3rd ed New York Cambridge University Press ISBN 978 0 521 88068 8 R Chivukula and Y Reznik Fast Computing of Discrete Cosine and Sine Transforms of Types VI and VII Proc SPIE Vol 8135 2011 Retrieved from https en wikipedia org w index php title Discrete sine transform amp oldid 1134938610, wikipedia, wiki, book, books, library,

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