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Riemannian metric and Lie bracket in computational anatomy

Computational anatomy (CA) is the study of shape and form in medical imaging. The study of deformable shapes in computational anatomy rely on high-dimensional diffeomorphism groups which generate orbits of the form . In CA, this orbit is in general considered a smooth Riemannian manifold since at every point of the manifold there is an inner product inducing the norm on the tangent space that varies smoothly from point to point in the manifold of shapes . This is generated by viewing the group of diffeomorphisms as a Riemannian manifold with , associated to the tangent space at . This induces the norm and metric on the orbit under the action from the group of diffeomorphisms.

The diffeomorphisms group generated as Lagrangian and Eulerian flows edit

The diffeomorphisms in computational anatomy are generated to satisfy the Lagrangian and Eulerian specification of the flow fields,  , generated via the ordinary differential equation

 

 

 

 

 

(Lagrangian flow)

with the Eulerian vector fields   in   for  , with the inverse for the flow given by

 

 

 

 

 

(Eulerianflow)

and the   Jacobian matrix for flows in   given as  

To ensure smooth flows of diffeomorphisms with inverse, the vector fields   must be at least 1-time continuously differentiable in space[1][2] which are modelled as elements of the Hilbert space   using the Sobolev embedding theorems so that each element   has 3-square-integrable derivatives thusly implies   embeds smoothly in 1-time continuously differentiable functions.[1][2] The diffeomorphism group are flows with vector fields absolutely integrable in Sobolev norm:

 

 

 

 

 

(Diffeomorphism Group)

The Riemannian orbit model edit

Shapes in Computational Anatomy (CA) are studied via the use of diffeomorphic mapping for establishing correspondences between anatomical coordinate systems. In this setting, 3-dimensional medical images are modelled as diffemorphic transformations of some exemplar, termed the template  , resulting in the observed images to be elements of the random orbit model of CA. For images these are defined as  , with for charts representing sub-manifolds denoted as  .

The Riemannian metric edit

The orbit of shapes and forms in Computational Anatomy are generated by the group action . This is made into a Riemannian orbit by introducing a metric associated to each point and associated tangent space. For this a metric is defined on the group which induces the metric on the orbit. Take as the metric for Computational anatomy at each element of the tangent space   in the group of diffeomorphisms

 ,

with the vector fields modelled to be in a Hilbert space with the norm in the Hilbert space  . We model   as a reproducing kernel Hilbert space (RKHS) defined by a 1-1, differential operator . For   a distribution or generalized function, the linear form   determines the norm:and inner product for   according to

 

where the integral is calculated by integration by parts for   a generalized function   the dual-space. The differential operator is selected so that the Green's kernel associated to the inverse is sufficiently smooth so that the vector fields support 1-continuous derivative.

The right-invariant metric on diffeomorphisms edit

The metric on the group of diffeomorphisms is defined by the distance as defined on pairs of elements in the group of diffeomorphisms according to


 

 

 

 

 

(metric-diffeomorphisms)

This distance provides a right-invariant metric of diffeomorphometry,[3][4][5] invariant to reparameterization of space since for all  ,

 

The Lie bracket in the group of diffeomorphisms edit

The Lie bracket gives the adjustment of the velocity term resulting from a perturbation of the motion in the setting of curved spaces. Using Hamilton's principle of least-action derives the optimizing flows as a critical point for the action integral of the integral of the kinetic energy. The Lie bracket for vector fields in Computational Anatomy was first introduced in Miller, Trouve and Younes.[6] The derivation calculates the perturbation   on the vector fields   in terms of the derivative in time of the group perturbation adjusted by the correction of the Lie bracket of vector fields in this function setting involving the Jacobian matrix, unlike the matrix group case:

  given by  

 

 

 

 

(adjoint-Lie-bracket)

Proof: Proving Lie bracket of vector fields take a first order perturbation of the flow at point  .

Lie bracket of vector fields

Taking the first order perturbation gives  , with fixed boundary  , with  , giving the following two Eqns:

  •  
  •  

Equating the above two equations gives the perturbation of the vector field in terms of the Lie bracket adjustment.

The Lie bracket gives the first order variation of the vector field with respect to first order variation of the flow.

 

The generalized Euler–Lagrange equation for the metric on diffeomorphic flows edit

The Euler–Lagrange equation can be used to calculate geodesic flows through the group which form the basis for the metric. The action integral for the Lagrangian of the kinetic energy for Hamilton's principle becomes

 

 

 

 

 

(Hamilton's Action Integral)

The action integral in terms of the vector field corresponds to integrating the kinetic energy

 

The shortest paths geodesic connections in the orbit are defined via Hamilton's Principle of least action requires first order variations of the solutions in the orbits of Computational Anatomy which are based on computing critical points on the metric length or energy of the path. The original derivation of the Euler equation[7] associated to the geodesic flow of diffeomorphisms exploits the was a generalized function equation when  is a distribution, or generalized function, take the first order variation of the action integral using the adjoint operator for the Lie bracket (adjoint-Lie-bracket) gives for all smooth  ,

 

Using the bracket   and   gives

 

 

 

 

 

(EL-General)

meaning for all smooth  

 

Equation (Euler-general) is the Euler-equation when diffeomorphic shape momentum is a generalized function. [8] This equation has been called EPDiff, Euler–Poincare equation for diffeomorphisms and has been studied in the context of fluid mechanics for incompressible fluids with   metric. [9][10]

Riemannian exponential for positioning edit

In the random orbit model of Computational anatomy, the entire flow is reduced to the initial condition which forms the coordinates encoding the diffeomorphism, as well as providing the means of positioning information in the orbit. This was first terms a geodesic positioning system in Miller, Trouve, and Younes.[4] From the initial condition   then geodesic positioning with respect to the Riemannian metric of Computational anatomy solves for the flow of the Euler–Lagrange equation. Solving the geodesic from the initial condition   is termed the Riemannian-exponential, a mapping   at identity to the group.

The Riemannian exponential satisfies   for initial condition  , vector field dynamics  ,

  • for classical equation on the diffeomorphic shape momentum as a smooth vector   with   the Euler equation exists in the classical sense as first derived for the density:[11]
 
  • for generalized equation,  , then
 

It is extended to the entire group,  .

The variation problem for matching or registering coordinate system information in computational anatomy edit

Matching information across coordinate systems is central to computational anatomy. Adding a matching term   to the action integral of Equation (Hamilton's action integral) which represents the target endpoint

 

The endpoint term adds a boundary condition for the Euler–Lagrange equation (EL-General) which gives the Euler equation with boundary term. Taking the variation gives

  • Necessary geodesic condition:
 

Proof:[11] The Proof via variation calculus uses the perturbations from above and classic calculus of variation arguments.

Proof via calculus of variations with endpoint energy
 

Euler–Lagrange geodesic endpoint conditions for image matching edit

The earliest large deformation diffeomorphic metric mapping (LDDMM) algorithms solved matching problems associated to images and registered landmarks. are in a vector spaces. The image matching geodesic equation satisfies the classical dynamical equation with endpoint condition. The necessary conditions for the geodesic for image matching takes the form of the classic Equation (EL-Classic) of Euler–Lagrange with boundary condition:

 
  • Necessary geodesic condition:
 

Euler–Lagrange geodesic endpoint conditions for landmark matching edit

The registered landmark matching problem satisfies the dynamical equation for generalized functions with endpoint condition:

 
  • Necessary geodesic conditions:
 

Proof:[11]

The variation   requires variation of the inverse   generalizes the matrix perturbation of the inverse via   giving   giving

 

References edit

  1. ^ a b P. Dupuis, U. Grenander, M.I. Miller, Existence of Solutions on Flows of Diffeomorphisms, Quarterly of Applied Math, 1997.
  2. ^ a b A. Trouvé. Action de groupe de dimension infinie et reconnaissance de formes. C R Acad Sci Paris Sér I Math, 321(8):1031– 1034, 1995.
  3. ^ Miller, M. I.; Younes, L. (2001-01-01). "Group Actions, Homeomorphisms, And Matching: A General Framework". International Journal of Computer Vision. 41: 61–84. CiteSeerX 10.1.1.37.4816. doi:10.1023/A:1011161132514. S2CID 15423783.
  4. ^ a b Miller, Michael I.; Younes, Laurent; Trouvé, Alain (2014-03-01). "Diffeomorphometry and geodesic positioning systems for human anatomy". Technology. 2 (1): 36–43. doi:10.1142/S2339547814500010. ISSN 2339-5478. PMC 4041578. PMID 24904924.
  5. ^ Miller, Michael I.; Trouvé, Alain; Younes, Laurent (2015-01-01). "Hamiltonian Systems and Optimal Control in Computational Anatomy: 100 Years Since D'Arcy Thompson". Annual Review of Biomedical Engineering. 17 (1): 447–509. doi:10.1146/annurev-bioeng-071114-040601. PMID 26643025.
  6. ^ Miller, Michael I.; Trouvé, Alain; Younes, Laurent (2006-01-31). "Geodesic Shooting for Computational Anatomy". Journal of Mathematical Imaging and Vision. 24 (2): 209–228. doi:10.1007/s10851-005-3624-0. ISSN 0924-9907. PMC 2897162. PMID 20613972.
  7. ^ Miller, Michael I.; Trouvé, Alain; Younes, Laurent (2006-01-31). "Geodesic Shooting for Computational Anatomy". Journal of Mathematical Imaging and Vision. 24 (2): 209–228. doi:10.1007/s10851-005-3624-0. ISSN 0924-9907. PMC 2897162. PMID 20613972.
  8. ^ M.I. Miller, A. Trouve, L. Younes, Geodesic Shooting in Computational Anatomy, IJCV, 2006.
  9. ^ Roberto, Camassa; Holm, Darryl D. (13 September 1993). "An integrable shallow water equation with peaked solitons". Physical Review Letters. 71 (11): 1661–1664. arXiv:patt-sol/9305002. Bibcode:1993PhRvL..71.1661C. doi:10.1103/PhysRevLett.71.1661. PMID 10054466. S2CID 8832709.
  10. ^ Holm, Darryl D.; Marsden, Jerrold E.; Ratiu, Tudor S. (1998). "The Euler–Poincaré equations and semidirect products with applications to continuum theories". Advances in Mathematics. 137 (1): 1–81. doi:10.1006/aima.1998.1721.
  11. ^ a b c M.I. Miller, A. Trouve, L Younes, On the Metrics and Euler–Lagrange equations of Computational Anatomy, Annu. Rev. Biomed. Eng. 2002. 4:375–405 doi:10.1146/annurev.bioeng.4.092101.125733 Copyright °c 2002 by Annual Reviews.

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A major contributor to this article appears to have a close connection with its subject It may require cleanup to comply with Wikipedia s content policies particularly neutral point of view Please discuss further on the talk page December 2017 Learn how and when to remove this template message Further information LDDMM Main article Computational anatomy Computational anatomy CA is the study of shape and form in medical imaging The study of deformable shapes in computational anatomy rely on high dimensional diffeomorphism groups f Diff V displaystyle varphi in operatorname Diff V which generate orbits of the form M f m f Diff V displaystyle mathcal M doteq varphi cdot m mid varphi in operatorname Diff V In CA this orbit is in general considered a smooth Riemannian manifold since at every point of the manifold m M displaystyle m in mathcal M there is an inner product inducing the norm m displaystyle cdot m on the tangent space that varies smoothly from point to point in the manifold of shapes m M displaystyle m in mathcal M This is generated by viewing the group of diffeomorphisms f Diff V displaystyle varphi in operatorname Diff V as a Riemannian manifold with f displaystyle cdot varphi associated to the tangent space at f Diff V displaystyle varphi in operatorname Diff V This induces the norm and metric on the orbit m M displaystyle m in mathcal M under the action from the group of diffeomorphisms Contents 1 The diffeomorphisms group generated as Lagrangian and Eulerian flows 2 The Riemannian orbit model 3 The Riemannian metric 3 1 The right invariant metric on diffeomorphisms 4 The Lie bracket in the group of diffeomorphisms 5 The generalized Euler Lagrange equation for the metric on diffeomorphic flows 6 Riemannian exponential for positioning 7 The variation problem for matching or registering coordinate system information in computational anatomy 7 1 Euler Lagrange geodesic endpoint conditions for image matching 7 2 Euler Lagrange geodesic endpoint conditions for landmark matching 8 ReferencesThe diffeomorphisms group generated as Lagrangian and Eulerian flows editThe diffeomorphisms in computational anatomy are generated to satisfy the Lagrangian and Eulerian specification of the flow fields f t t 0 1 displaystyle varphi t t in 0 1 nbsp generated via the ordinary differential equation d d t f t v t f t f 0 id displaystyle frac d dt varphi t v t circ varphi t varphi 0 operatorname id nbsp Lagrangian flow with the Eulerian vector fields v v 1 v 2 v 3 displaystyle v doteq v 1 v 2 v 3 nbsp in R 3 displaystyle mathbb R 3 nbsp for v t f t f t 1 t 0 1 displaystyle v t dot varphi t circ varphi t 1 t in 0 1 nbsp with the inverse for the flow given by d d t f t 1 D f t 1 v t f 0 1 id displaystyle frac d dt varphi t 1 D varphi t 1 v t varphi 0 1 operatorname id nbsp Eulerianflow and the 3 3 displaystyle 3 times 3 nbsp Jacobian matrix for flows in R 3 displaystyle mathbb R 3 nbsp given as D f f i x j displaystyle D varphi doteq left frac partial varphi i partial x j right nbsp To ensure smooth flows of diffeomorphisms with inverse the vector fields R 3 displaystyle mathbb R 3 nbsp must be at least 1 time continuously differentiable in space 1 2 which are modelled as elements of the Hilbert space V V displaystyle V cdot V nbsp using the Sobolev embedding theorems so that each element v i H 0 3 i 1 2 3 displaystyle v i in H 0 3 i 1 2 3 nbsp has 3 square integrable derivatives thusly implies V V displaystyle V cdot V nbsp embeds smoothly in 1 time continuously differentiable functions 1 2 The diffeomorphism group are flows with vector fields absolutely integrable in Sobolev norm Diff V f f 1 f t v t f t f 0 id 0 1 v t V d t lt displaystyle operatorname Diff V doteq varphi varphi 1 dot varphi t v t circ varphi t varphi 0 operatorname id int 0 1 v t V dt lt infty nbsp Diffeomorphism Group The Riemannian orbit model editShapes in Computational Anatomy CA are studied via the use of diffeomorphic mapping for establishing correspondences between anatomical coordinate systems In this setting 3 dimensional medical images are modelled as diffemorphic transformations of some exemplar termed the template I t e m p displaystyle I temp nbsp resulting in the observed images to be elements of the random orbit model of CA For images these are defined as I I I I t e m p f f Diff V displaystyle I in mathcal I doteq I I temp circ varphi varphi in operatorname Diff V nbsp with for charts representing sub manifolds denoted as M f m t e m p f Diff V displaystyle mathcal M doteq varphi cdot m temp varphi in operatorname Diff V nbsp The Riemannian metric editThe orbit of shapes and forms in Computational Anatomy are generated by the group actionM f m f Diff V displaystyle mathcal M doteq varphi cdot m varphi in operatorname Diff V nbsp This is made into a Riemannian orbit by introducing a metric associated to each point and associated tangent space For this a metric is defined on the group which induces the metric on the orbit Take as the metric for Computational anatomy at each element of the tangent space f Diff V displaystyle varphi in operatorname Diff V nbsp in the group of diffeomorphisms f f f f 1 V v V displaystyle dot varphi varphi doteq dot varphi circ varphi 1 V v V nbsp with the vector fields modelled to be in a Hilbert space with the norm in the Hilbert space V V displaystyle V cdot V nbsp We model V displaystyle V nbsp as a reproducing kernel Hilbert space RKHS defined by a 1 1 differential operatorA V V displaystyle A V rightarrow V nbsp For s v A v V displaystyle sigma v doteq Av in V nbsp a distribution or generalized function the linear form s w R 3 i w i x s i d x displaystyle sigma mid w doteq int mathbb R 3 sum i w i x sigma i dx nbsp determines the norm and inner product for v V displaystyle v in V nbsp according to v w V X A v w d x v V 2 X A v v d x v w V displaystyle langle v w rangle V doteq int X Av cdot w dx v V 2 doteq int X Av cdot v dx v w in V nbsp where the integral is calculated by integration by parts for A v displaystyle Av nbsp a generalized function A v V displaystyle Av in V nbsp the dual space The differential operator is selected so that the Green s kernel associated to the inverse is sufficiently smooth so that the vector fields support 1 continuous derivative The right invariant metric on diffeomorphisms edit The metric on the group of diffeomorphisms is defined by the distance as defined on pairs of elements in the group of diffeomorphisms according to d Diff V ps f inf v t 1 2 0 1 X A v t v t d x d t f 0 ps f 1 f f t v t f t 1 2 displaystyle d operatorname Diff V psi varphi inf v t left frac 1 2 int 0 1 int X Av t cdot v t dx dt varphi 0 psi varphi 1 varphi dot varphi t v t circ varphi t right 1 2 nbsp metric diffeomorphisms This distance provides a right invariant metric of diffeomorphometry 3 4 5 invariant to reparameterization of space since for all f Diff V displaystyle varphi in operatorname Diff V nbsp d Diff V ps f d Diff V ps f f f displaystyle d operatorname Diff V psi varphi d operatorname Diff V psi circ varphi varphi circ varphi nbsp The Lie bracket in the group of diffeomorphisms editThe Lie bracket gives the adjustment of the velocity term resulting from a perturbation of the motion in the setting of curved spaces Using Hamilton s principle of least action derives the optimizing flows as a critical point for the action integral of the integral of the kinetic energy The Lie bracket for vector fields in Computational Anatomy was first introduced in Miller Trouve and Younes 6 The derivation calculates the perturbation d v displaystyle delta v nbsp on the vector fields v e v e d v displaystyle v varepsilon v varepsilon delta v nbsp in terms of the derivative in time of the group perturbation adjusted by the correction of the Lie bracket of vector fields in this function setting involving the Jacobian matrix unlike the matrix group case a d v V V displaystyle ad v V mapsto V nbsp given by a d v w D v w D w v v w V displaystyle ad v w doteq Dv w Dw v v w in V nbsp adjoint Lie bracket Proof Proving Lie bracket of vector fields take a first order perturbation of the flow at point f Diff V displaystyle varphi in operatorname Diff V nbsp Lie bracket of vector fieldsTaking the first order perturbation gives f t e id e w f f e w f displaystyle varphi t varepsilon doteq operatorname id varepsilon w circ varphi varphi varepsilon w circ varphi nbsp with fixed boundary w 0 w 1 0 displaystyle w 0 w 1 0 nbsp with d d t f t e v t e f t e f 0 e id f 1 e f 1 displaystyle frac d dt varphi t varepsilon v t varepsilon circ varphi t varepsilon varphi 0 varepsilon operatorname id varphi 1 varepsilon varphi 1 nbsp giving the following two Eqns d d t f t e d d t f t e d d t w t f t v t f t D w t f t v t f t o e displaystyle frac d dt varphi t varepsilon frac d dt varphi t varepsilon frac d dt w t circ varphi t v t circ varphi t Dw t circ varphi t v t circ varphi t o varepsilon nbsp f t e v t e d v t f t e w t f t v t f t e D v t f t w t f t d v t f t o e displaystyle dot varphi t varepsilon v t varepsilon delta v t circ varphi t varepsilon w t circ varphi t simeq v t circ varphi t varepsilon Dv t circ varphi t w t circ varphi t delta v t circ varphi t o varepsilon nbsp Equating the above two equations gives the perturbation of the vector field in terms of the Lie bracket adjustment The Lie bracket gives the first order variation of the vector field with respect to first order variation of the flow d v t d d t w t a d v t w t d d t w t D v t w t D w t v t displaystyle delta v t frac d dt w t ad v t w t frac d dt w t Dv t w t Dw t v t nbsp The generalized Euler Lagrange equation for the metric on diffeomorphic flows editMain articles Computational anatomy and Computational anatomy The Euler Lagrange equation on shape momentum for geodesics on the group of diffeomorphisms The Euler Lagrange equation can be used to calculate geodesic flows through the group which form the basis for the metric The action integral for the Lagrangian of the kinetic energy for Hamilton s principle becomes J f 1 2 0 1 f t f t 2 d t 1 2 0 1 f t f t 1 V 2 d t 1 2 0 1 X A f t f t 1 f t f t 1 d x d t displaystyle J varphi doteq frac 1 2 int 0 1 dot varphi t varphi t 2 dt frac 1 2 int 0 1 dot varphi t circ varphi t 1 V 2 dt frac 1 2 int 0 1 int X A dot varphi t circ varphi t 1 cdot dot varphi t circ varphi t 1 dx dt nbsp Hamilton s Action Integral The action integral in terms of the vector field corresponds to integrating the kinetic energy J v 1 2 0 1 v t V 2 d t 1 2 0 1 X A v t v t d x d t displaystyle J v doteq frac 1 2 int 0 1 v t V 2 dt frac 1 2 int 0 1 int X Av t cdot v t dx dt nbsp The shortest paths geodesic connections in the orbit are defined via Hamilton s Principle of least action requires first order variations of the solutions in the orbits of Computational Anatomy which are based on computing critical points on the metric length or energy of the path The original derivation of the Euler equation 7 associated to the geodesic flow of diffeomorphisms exploits the was a generalized function equation whenA v V displaystyle Av in V nbsp is a distribution or generalized function take the first order variation of the action integral using the adjoint operator for the Lie bracket adjoint Lie bracket gives for all smooth w V displaystyle w in V nbsp d d e J f e e 0 0 1 X A v t d v t d x d t 0 1 X A v t d d t w t D v t w D w v t d x d t displaystyle frac d d varepsilon J varphi varepsilon varepsilon 0 int 0 1 int X Av t cdot delta v t dx dt int 0 1 int X Av t cdot left frac d dt w t Dv t w Dw v t right dx dt nbsp Using the bracket a d v w V V displaystyle ad v w in V mapsto V nbsp and a d v V V displaystyle ad v V rightarrow V nbsp givesd d t A v t a d v t A v t 0 t 0 1 displaystyle frac d dt Av t ad v t Av t 0 t in 0 1 nbsp EL General meaning for all smooth w V displaystyle w in V nbsp X d d t A v t a d v t A v t w d x X d d t A v t w d x X A v t D v t w D w v t d x 0 displaystyle int X left frac d dt Av t ad v t Av t right cdot w dx int X frac d dt Av t cdot w dx int X Av t cdot left Dv t w Dw v t right dx 0 nbsp Equation Euler general is the Euler equation when diffeomorphic shape momentum is a generalized function 8 This equation has been called EPDiff Euler Poincare equation for diffeomorphisms and has been studied in the context of fluid mechanics for incompressible fluids with L 2 displaystyle L 2 nbsp metric 9 10 Riemannian exponential for positioning editIn the random orbit model of Computational anatomy the entire flow is reduced to the initial condition which forms the coordinates encoding the diffeomorphism as well as providing the means of positioning information in the orbit This was first terms a geodesic positioning system in Miller Trouve and Younes 4 From the initial condition v 0 displaystyle v 0 nbsp then geodesic positioning with respect to the Riemannian metric of Computational anatomy solves for the flow of the Euler Lagrange equation Solving the geodesic from the initial condition v 0 displaystyle v 0 nbsp is termed the Riemannian exponential a mapping Exp id V Diff V displaystyle operatorname Exp operatorname id cdot V to operatorname Diff V nbsp at identity to the group The Riemannian exponential satisfies Exp id v 0 f 1 displaystyle operatorname Exp operatorname id v 0 varphi 1 nbsp for initial condition f 0 v 0 displaystyle dot varphi 0 v 0 nbsp vector field dynamics f t v t f t t 0 1 displaystyle dot varphi t v t circ varphi t t in 0 1 nbsp for classical equation on the diffeomorphic shape momentum as a smooth vector A v t m t d x displaystyle Av t mu t dx nbsp with X m t w d x w V displaystyle int X mu t cdot w dx w in V nbsp the Euler equation exists in the classical sense as first derived for the density 11 d d t m t D v t T m t D m t v t v m t 0 A v t m t d x displaystyle frac d dt mu t Dv t T mu t D mu t v t nabla cdot v mu t 0 Av t mu t dx nbsp for generalized equation A v V displaystyle Av in V nbsp thend d t A v t a d v t A v t 0 t 0 1 displaystyle frac d dt Av t ad v t Av t 0 t in 0 1 nbsp It is extended to the entire group f Exp f v 0 f Exp id v 0 f displaystyle varphi operatorname Exp varphi v 0 circ varphi doteq operatorname Exp operatorname id v 0 circ varphi nbsp The variation problem for matching or registering coordinate system information in computational anatomy editFurther information Large deformation diffeomorphic metric mapping Matching information across coordinate systems is central to computational anatomy Adding a matching term E f Diff V R displaystyle E varphi in operatorname Diff V rightarrow R nbsp to the action integral of Equation Hamilton s action integral which represents the target endpoint C f 0 1 X A v t v t d x d t E f 1 displaystyle C varphi doteq int 0 1 int X Av t cdot v t dx dt E varphi 1 nbsp The endpoint term adds a boundary condition for the Euler Lagrange equation EL General which gives the Euler equation with boundary term Taking the variation gives Necessary geodesic condition d d t A v t D v t T A v t D A v t v t v A v t 0 A v 1 E f f 1 0 displaystyle begin cases amp dfrac d dt Av t Dv t T Av t DAv t v t nabla cdot v Av t 0 4pt amp Av 1 frac partial E varphi partial varphi 1 0 end cases nbsp dd Proof 11 The Proof via variation calculus uses the perturbations from above and classic calculus of variation arguments Proof via calculus of variations with endpoint energy 0 1 X A v t d d t d f t D v t d f t D d f t v t d x d t X E f f 1 d f 1 d x 0 1 X d A v t d t a d v t A v t d f t d x d t X A v 1 E f f 1 d f 1 d x displaystyle begin aligned amp int 0 1 int X Av t cdot left frac d dt delta varphi t Dv t delta varphi t D delta varphi t v t right dx dt int X left frac partial E varphi partial varphi 1 cdot delta varphi 1 dx right 6pt amp int 0 1 int X left frac dAv t dt ad v t Av t right cdot delta varphi t dx dt int X left Av 1 frac partial E varphi partial varphi 1 right cdot delta varphi 1 dx end aligned nbsp Euler Lagrange geodesic endpoint conditions for image matching edit The earliest large deformation diffeomorphic metric mapping LDDMM algorithms solved matching problems associated to images and registered landmarks are in a vector spaces The image matching geodesic equation satisfies the classical dynamical equation with endpoint condition The necessary conditions for the geodesic for image matching takes the form of the classic Equation EL Classic of Euler Lagrange with boundary condition min f f v t f t C f 1 2 0 1 X A v t v t d x d t 1 2 X I f 1 1 x J x 2 d x displaystyle min varphi dot varphi v t circ varphi t C varphi doteq frac 1 2 int 0 1 int X Av t cdot v t dx dt frac 1 2 int X I circ varphi 1 1 x J x 2 dx nbsp Necessary geodesic condition d d t A v t D v t T A v t D A v t v t v A v t 0 A v 1 I f 1 1 J I f 1 1 displaystyle begin cases amp dfrac d dt Av t Dv t T Av t DAv t v t nabla cdot v Av t 0 4pt amp Av 1 I circ varphi 1 1 J nabla I circ varphi 1 1 end cases nbsp dd Euler Lagrange geodesic endpoint conditions for landmark matching edit The registered landmark matching problem satisfies the dynamical equation for generalized functions with endpoint condition min f f v t f t C f 1 2 0 1 X A v t v t d x d t 1 2 i f 1 x i y i f 1 x i y i displaystyle min varphi dot varphi v t circ varphi t C varphi doteq frac 1 2 int 0 1 int X Av t cdot v t dx dt frac 1 2 sum i varphi 1 x i y i cdot varphi 1 x i y i nbsp Necessary geodesic conditions d d t A v t a d v t A v t 0 t 0 1 A v 1 i 1 n d f 1 x i y i f 1 x i displaystyle begin cases amp dfrac d dt Av t ad v t Av t 0 t in 0 1 4pt amp Av 1 sum i 1 n delta varphi 1 x i y i varphi 1 x i end cases nbsp dd Proof 11 The variation f E f displaystyle frac partial partial varphi E varphi nbsp requires variation of the inverse f 1 displaystyle varphi 1 nbsp generalizes the matrix perturbation of the inverse via f e d f f f 1 e d f 1 f 1 id o e displaystyle varphi varepsilon delta varphi circ varphi circ varphi 1 varepsilon delta varphi 1 circ varphi 1 operatorname id o varepsilon nbsp giving d f 1 f 1 D f 1 1 d f displaystyle delta varphi 1 circ varphi 1 D varphi 1 1 delta varphi nbsp giving d d e 1 2 X I f 1 e d f 1 f 1 J 2 d x e 0 X I f 1 J I f 1 D f 1 1 d f d x X I f 1 1 J I f 1 1 d f d x displaystyle begin aligned amp frac d d varepsilon frac 1 2 left int X I circ varphi 1 varepsilon delta varphi 1 circ varphi 1 J 2 dx right varepsilon 0 6pt amp int X I circ varphi 1 J nabla I varphi 1 D varphi 1 1 delta varphi dx 6pt amp int X I circ varphi 1 1 J nabla I circ varphi 1 1 delta varphi dx end aligned nbsp References edit a b P Dupuis U Grenander M I Miller Existence of Solutions on Flows of Diffeomorphisms Quarterly of Applied Math 1997 a b A Trouve Action de groupe de dimension infinie et reconnaissance de formes C R Acad Sci Paris Ser I Math 321 8 1031 1034 1995 Miller M I Younes L 2001 01 01 Group Actions Homeomorphisms And Matching A General Framework International Journal of Computer Vision 41 61 84 CiteSeerX 10 1 1 37 4816 doi 10 1023 A 1011161132514 S2CID 15423783 a b Miller Michael I Younes Laurent Trouve Alain 2014 03 01 Diffeomorphometry and geodesic positioning systems for human anatomy Technology 2 1 36 43 doi 10 1142 S2339547814500010 ISSN 2339 5478 PMC 4041578 PMID 24904924 Miller Michael I Trouve Alain Younes Laurent 2015 01 01 Hamiltonian Systems and Optimal Control in Computational Anatomy 100 Years Since D Arcy Thompson Annual Review of Biomedical Engineering 17 1 447 509 doi 10 1146 annurev bioeng 071114 040601 PMID 26643025 Miller Michael I Trouve Alain Younes Laurent 2006 01 31 Geodesic Shooting for Computational Anatomy Journal of Mathematical Imaging and Vision 24 2 209 228 doi 10 1007 s10851 005 3624 0 ISSN 0924 9907 PMC 2897162 PMID 20613972 Miller Michael I Trouve Alain Younes Laurent 2006 01 31 Geodesic Shooting for Computational Anatomy Journal of Mathematical Imaging and Vision 24 2 209 228 doi 10 1007 s10851 005 3624 0 ISSN 0924 9907 PMC 2897162 PMID 20613972 M I Miller A Trouve L Younes Geodesic Shooting in Computational Anatomy IJCV 2006 Roberto Camassa Holm Darryl D 13 September 1993 An integrable shallow water equation with peaked solitons Physical Review Letters 71 11 1661 1664 arXiv patt sol 9305002 Bibcode 1993PhRvL 71 1661C doi 10 1103 PhysRevLett 71 1661 PMID 10054466 S2CID 8832709 Holm Darryl D Marsden Jerrold E Ratiu Tudor S 1998 The Euler Poincare equations and semidirect products with applications to continuum theories Advances in Mathematics 137 1 1 81 doi 10 1006 aima 1998 1721 a b c M I Miller A Trouve L Younes On the Metrics and Euler Lagrange equations of Computational Anatomy Annu Rev Biomed Eng 2002 4 375 405 doi 10 1146 annurev bioeng 4 092101 125733 Copyright c 2002 by Annual Reviews Retrieved from https en wikipedia org w index php title Riemannian metric and Lie bracket in computational anatomy amp oldid 1123961638, wikipedia, wiki, book, books, library,

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