The present application relates generally to motion compensation in images and, more particularly, to motion compensation in a temporal sequence of images.
Medical imaging techniques are used in the detection of cancer or precancerous conditions in a patient. An important application is in the detection of tumors or potential tumors in breast cancer. Potential tumors are difficult to detect but it is known that such tissue typically exhibits a more rapid intake (wash-in) of contrast agent, as well as a more rapid washout than adjacent, non-tumor tissue. This difference in behavior allows the detection of suspect tissue through comparison of images of a patient made before and after such wash-in and/or washout. Using such time sequential images made by an imaging technique such as magnetic resonance imaging (MRI), a comparison may be made between images to detect differences due to the contrast wash-in and washout behavior exhibit by different regions of the acquired MR volume so as to detect such suspect tissue.
In order to perform this detection advantageously, one needs to track the intensity of a single voxel in a temporal sequence of such volumes. However, a difficulty arises in that the patient typically moves between consecutive acquisitions and thereby introduces motion-related differences between the acquired images whereby a single point in space can no longer be tracked, unless motion correction is performed.
It is an object of the present invention to solve the motion correction problem in an advantageous manner in, for example, breast MR detection of potential tumors which are detected as tissue that has a rapid intake (wash-in) of contrast agent, as well as a rapid washout.
Prior art approaches to solving this problem in the past have computed the optic-flow between two images, of which an arbitrary one is selected as the reference among the images of the sequence. The two images are obtained from the acquired images by computing a Laplacian pyramid. The optic flow is calculated by solving a minimization problem of the point-to-point difference between the two Laplacian images.
The problem of estimating the geometric deformation between two images has a long history in the scientific literature. Techniques for computing the optic flow can be traced back to papers like B. K. Horn and B. G. Schunk: Determining optical flow, Artificial Intelligence, 17:185-203, 1981, and references cited therein. The use of the cross-correlation as similarity measure can be found in Olivier Faugeras, Bernard Hotz, Herv Mathieu, Thierry Viville, Zhengyou Zhang, Pascal Fua, Eric Thron, Laurent Moll, Grard Berry, Jean Vuillemin, Patrice Bertin, and Catherine Proy: Real time correlation based stereo: algorithm implementations and applications, Technical Report 2013, INRIA Sophia-Antipolis, France, 1993; Olivier Faugeras and Renaud Keriven: Variational principles, surface evolution, PDE's, level set methods and the stereo problem, IEEE Transactions on Image Processing, 7(3):336-344, March 1998; Jacques Bride and Gerardo Hermosillo: Recalage rigide sans contrainte de preservation d'intensite par regression heteroscdastique. In TAIMA, Hammamet, Tunisie, October 2001; P Cachier and X. Pennec: 3d non-rigid registration by gradient descent on a gaussian weighted similarity measure using convolutions, in Proceedings of MMBIA, pages 182-189, June 2000; and T. Netsch, P. Rosch, A. van Muiswinkel, and J. Weese: Towards real-time multi-modality 3d medical image registration, in Proceedings of the 8th International Conference on ComputerVision, Vancouver, Canada, 2001. IEEE Computer Society, IEEE Computer Society Press.
Other related similarity measures have been proposed, like the correlation ratio, A. Roche, G. Malandain, X. Pennec, and N. Ayache: The correlation ratio as new similarity metric for multimodal image registration, in W. M. Wells III, P. Viola, H. Atsumi, S. Nakajima, and R. Kikinis: Multi-modal volume registration by maximization of mutual information. Medical Image Analysis, 1(1):35-51, 1996, pages 1115-1124, and the mutual information, Paul Viola: Alignment by Maximisation of Mutual Information. PhD thesis, MIT, 1995; Paul Viola and William M. Wells III: Alignment by maximization of mutual information, The International Journal of Computer Vision, 24(2): 137-154, 1997; F. Maes, A. Collignon, D. Vandermeulen, G. Marchal, and P. Suetens: Multimodality image registration by maximization of mutual information, IEEE transactions on Medical Imaging, 16(2):187-198, April 1997; W. M. Wells III et al., op. cit., among others, R. P. Woods, J. C. Maziotta, and S. R. Cherry: MRI-pet registration with automated algorithm, Journal of computer assisted tomography, 17(4):536-546, 1993; D. Hill: Combination of 3D medical images from multiple modalities. PhD thesis, University of London, December 1993: G. Penney, J. Weese, J. A. Little, P. Desmedt, D. LG. Hill, and D. J. Hawkes: A comparison of similarity measures for use in 2d-3d medical image registration, In J.van Leeuwen G. Goos, J. Hartmanis, editor, First International Conference on Medical Image Computing and Computer-Assisted Intervention, volume 1496 of Lecture Notes in Computer Science. Springer, 1998; and M. E. Leventon and W. E. L. Grimson: Multi-Modal Volume Registration Using Joint Intensity Distributions: in W. M. Wells, A. Colchester, and S. Delp, editors. Number 1496 in Lecture Notes in Computer Science, Cambridge, Mass., USA, October 1998. Springer.
Conjugate Gradient minimization is described in William H. Press, Brian P. Flannery, Saul A. Teukolsky, and William T. Vetterling: Numerical Recipes in C. Cambridge University Press, 1988. The type (or family) of deformation which is assumed is the second key component of any motion correction algorithm. Parametric transformations are the most commonly used. See Chuck Meyer, Jennifer Boes, Boklye Kim, and Peyton Bland: Evaluation of control point selection in automatic, mutual information driven, 3d warping, in J.van Leeuwen G. Goos, J. Hartmanis, editor, First International Conference on Medical Image Computing and Computer-Assisted Intervention, Proceedings, volume 1496 of Lecture Notes in Computer Science, October 1998; D. R{umlaut over ( )}uckert, C. Hayes, C. Studholme, P. Summers, M. Leach, and D. J. Hawkes: Non-rigid registration of breast MR images using mutual information, in W. M. Wells, A. Colchester, and S. Delp, editors, Number 1496 in Lecture Notes in Computer Science, Cambridge, Mass., USA, October 1998, Springer; Paul Viola. Alignment by Maximisation of Mutual Information, PhD thesis, MIT, 1995; W. M. Wells III, P. Viola, H. Atsumi, S. Nakajima, and R. Kikinis. Multi-modal volume registration by maximization of mutual information. Medical Image Analysis, 1(1):35-51, 1996; and Paul Viola and William M. Wells III: Alignement by maximization of mutual information, The International Journal of Computer Vision, 24(2): 137-154, 1997.
When the deformation is not defined parametrically, the family is often constrained by requiring some smoothness of the displacement field, possibly preserving discontinuities. See J. P. Thirion. Image matching as a diffusion process: An analogy with Maxwell's demons, Medical Image Analysis, 2(3):243-260, 1998; L. Alvarez, R. Deriche, J. Weickert, and J. Sánchez: Dense disparity map estimation respecting image discontinuities: A PDE and scale-space based approach, International Journal of Visual Communication and Image Representation, Special Issue on Partial Differential Equations in Image Processing, Computer Vision and Computer Graphics, 2000; M. Proesmans, L. Van Gool, E. Pauwels, and A. Oosterlinck: Determination of Optical Flow and its Discontinuities using Non-Linear Diffusion, in Proceedings of the 3rd ECCV, II, number 801 in Lecture Notes in Computer Science, pages 295-304, Springer-Verlag, 1994; and L. Alvarez, J. Weickert, and J. Sánchez: Reliable Estimation of Dense Optical Flow Fields with Large Displacements, Technical report, Cuadernos del Instituto Universitario de Ciencias y Tecnologias Ciberneticas, 2000: a revised version has appeared at IJCV 39(1):41-56,2000; E. Mmin and P. Prez: A multigrid approach for hierarchical motion estimation, in Proceedings of the 6th International Conference on Computer Vision, pages 933-938, IEEE Computer Society Press, Bombay, India, January 1998; E. Mmin and P. Prez: Dense/parametric estimation of fluid flows, in IEEE Int. Conf. on Image Processing, ICIP'99, Kobe, Japan, October 1999: G. Aubert, R. Deriche, and P. Kornprobst: Computing optical flow via variational techniques, SIAM Journal of Applied Mathematics, 60(1): 156-182, 1999; G. Aubert and P. Kornprobst: A mathematical study of the relaxed optical flow problem in the space BV, SIAM Journal on Mathematical Analysis, 30(6): 1282-1308, 1999; and R. Deriche, P. Kornprobst, and G. Aubert: Optical flow estimation while preserving its discontinuities: A variational approach, in Proceedings of the 2nd Asian Conference on Computer Vision, volume 2, pages 71-80, Singapore, December 1995.
Some regularizing approaches are based on explicit smoothing of the field, as in J. P. Thirion: Image matching as a diffusion process: An analogy with Maxwell's demons, Medical Image Analysis, 2(3):243-260, 1998; and Christophe Chefd'hotel, Gerardo Hermosillo, and Olivier Faugeras. Flows of Diffeomorphisms for Multimodal Image Registration, in International Symposium on Biomedical Imaging. IEEE, 2002, while others consider an additive term in the error criterion, yielding (possibly anisotropic) diffusion terms, see G. Aubert and P. Kornprobst: Mathematical Problems in Image Processing: Partial Differential Equations and the Calculus of Variations, volume 147 of Applied Mathematical Sciences, Springer-Verlag, January 2002; J. Weickert and C. Schnörr: A theoretical framework for convex regularizers in pde-based computation of image motion, The International Journal of Computer Vision, 45(3):245-264, December 2001; Gerardo Hermosillo, Christophe Chefd'hotel, and Olivier Faugeras: Variational methods for multimodal image matching, The International Journal of Computer Vision, 50(3):329-343, November 2002; G. Hermosillo and O. Faugeras: Dense image matching with global and local statistical criteria: a variational approach, in Proceedings of CVPR'01, 2001; and Gerardo Hermosillo: Variational Methods for Multimodal Image Matching, PhD thesis, INRIA: the document is accessible at ftp://ftp-sop.inria.fr/robotvis/html/Papers/hermosillo:02.ps.gz, 2002.
Fluid methods fix the amount of desired smoothness or fluidness of the deformation using a single parameter. See Christophe Chefd'hotel, Gerardo Hermosillo, and Olivier Faugeras: Flows of Diffeomorphisms for Multimodal Image Registration, in International Symposium on Biomedical Imaging, IEEE, 2002; Gary Christensen, MI Miller, and MW Vannier: A 3D deformable magnetic resonance textbook based on elasticity, in Proceedings of the American Association for Artificial Intelligence, Symposium: Applications of Computer Vision in Medical Image Processing, 1994; and Alain Trouv: Diffeomorphisms groups and pattern matching in image analysis, International Journal of Computer Vision, 28(3):213-21, 1998.
Multi-resolution approaches have also been previously investigated. See L. Alvarez, J. Weickert, and J. Sánchez: Reliable Estimation of Dense Optical Flow Fields with Large Displacements, Technical report, Cuadernos del Instituto Universitario de Ciencias y Tecnologias Ciberneticas, 2000. A revised version has appeared at IJCV 39(1):41-56,2000. In L. Alvarez et al., op. cit., a scale-space focusing strategy is used. Most of the existing methods either do not account for intensity variations or are limited to parametric transformations.
Extensions to more complex transformations which account for intensity variations include approaches relying on block-matching strategies. See J. B. A. Maintz, H. W. Meijering, and M. A. Viergever: General multimodal elastic registration based on mutual information, in Medical Imaging 1998—Image Processing, volume 3338, pages 144-154. SPIE, 1998; T. Gaens, F. Maes D. Vandermeulen, and P. Suetens: Non-rigid multimodal image registration using mutual information, in J.van Leeuwen G. Goos, J. Hartmanis, editor, First International Conference on Medical Image Computing and Computer-Assisted Intervention, volume 1496 of Lecture Notes in Computer Science Springer, 1998; and N. Hata, T. Dohi, S. Warfield, W. Wells III, R. Kikinis, and F. A. Jolesz: Multi-modality deformable registration of pre-and intra-operative images for MRI-guided brain surgery, in J.van Leeuwen G. Goos, J. Hartmanis, editor, First International Conference on Medical Image Computing and Computer-Assisted Intervention, volume 1496 of Lecture Notes in Computer Science. Springer, 1998; or parametric intensity corrections, see A. Roche, A. Guimond, J. Meunier, and N. Ayache: Multimodal Elastic Matching of Brain Images, in Proceedings of the 6th European Conference on Computer Vision, Dublin, Ireland, June 2000.
Some recent approaches rely on the computation of the gradient of the local cross-correlation. See P. Cachier and X. Pennec: 3d non-rigid registration by gradient descent on a gaussian weighted similarity measure using convolutions. In Proceedings of MMBIA, pages 182-189, June 2000; T. Netsch, P. Rosch, A. van Muiswinkel, and J. Weese: Towards real-time multi-modality 3D medical image registration, in Proceedings of the 8th International Conference on Computer Vision, Vancouver, Canada, 2001, IEEE Computer Society, IEEE Computer Society Press; Gerardo Hermosillo, Christophe Chefd'hotel, and Olivier Faugeras. Variational methods for multimodal image matching. The International Journal of Computer Vision, 50(3):329-343, November 2002; G. Hermosillo and O. Faugeras: Dense image matching with global and local statistical criteria: a variational approach, in Proceedings of CVPR'01, 2001; Gerardo Hermosillo: Variational Methods for Multimodal Image Matching. Phd thesis, INRIA: the document is accessible at ftp://ftp-sop.inria.fr/robotvis/html/Papers/hermosillo:02.ps.gz, 2002; and Christophe Chefd'hotel, Gerardo Hermosillo, and Olivier Faugeras: Flows of Diffeomorphisms for Multimodal Image Registration, in International Symposium on Biomedical Imaging. IEEE, 2002.
General background material on optic flow and on image pyramids may be found in textbooks and publications relating to image processing. Textbooks useful in providing background material helpful to gaining a better understanding of the present invention include, for example, FUNDAMENTALS OF IMAGE PROCESSING by Arthur R. Weeks, SPIE Optical Engineering Press & IEEE Press; 1996; IMAGE PROCESSING, ANALYSIS, AND MACHINE VISION, Second Edition, by Milan Sonka et al., PWS Publishing; 1999; and DIGITAL IMAGE PROCESSING, Second Edition, by Rafael C. Gonzalez et al., Prentice Hall; 2002.
It is herein recognized that, when such known prior art approaches are used, the non-singularity of the deformation is not ensured. Accordingly, it is possible for the motion correction step to reduce a tumor to a point, and thereby hide it from detection.
An object of the present invention is to provide an efficient method for compensating for motion that has occurred between two images having a general similarity and having been acquired at different times.
In accordance with an aspect of the present invention, a method and system for performing motion compensation in a temporal sequence of images are herein disclosed and described. The compensation is done by performing a conjugate gradient maximization of a similarity measure between two images, based on the local cross-correlation of corresponding regions around each point. The non-singularity of the deformation is ensured by a special composition technique when building the solution.
In accordance with an aspect of the present invention, a method for motion compensation in images utilizes a known mathematical property of invertible deformations, namely, that the composition of invertible deformations results in an overall deformation which is itself invertible. It is herein recognized that the component deformations need to be sufficiently small to avoid problems with singularities.
In accordance with an aspect of the invention, a combination of a conjugate gradient optimization with a composition of small and smooth displacements is utilized, which achieves fast convergence while ensuring that the deformation stays nonsingular.
In accordance with an aspect of the present invention, the non-singularity of the deformation is ensured by a special composition technique when building the solution. The use of the local cross-correlation as a similarity measure between two images is more robust than a point-to-point comparison.
In accordance with another aspect of the invention, special handling of the multi-resolution pyramid, with only the slices being reduced in size, improves the precision with respect to reducing in all directions.
In accordance with another aspect of the present invention, global handling of the sequence and a multi-resolution approach are utilized. The system is designed to work with a set of images as input, which is assumed to be a temporal sequence of similar images, such as images of the same patient acquired at different points in time for identifying differences between the images due to relatively rapid intake and/or washout of a contrast agent. As mentioned above, such differences may be indicative of corresponding cancerous or precancerous regions of the patient's body. In particular for the Breast MR application, typically six to fourteen images are acquired at intervals of two to three minutes. Each image is a three-dimensional array of scalar values covering roughly the chest area of the patient. The output of the system is again a set of images (one for each input image) which are “motion-corrected”. The input images are similar to one another but differ mainly because of three factors:
The output sequence is obtained by choosing a reference image from the input sequence and finding, for each of the remaining images, a spatial non-rigid deformation that, applied to the particular image considered, compensates for motion occurred with respect to the reference. This overall procedure is described in diagram
In accordance with an aspect of the invention, a method for motion compensation in first and second images in a temporal sequence by computing a deformation function comprises performing a conjugate gradient maximization of a similarity measure between the first and second images; and deriving the deformation function by utilizing the gradient maximization in conjunction with composition criteria so as to ensure non-singularity of the deformation function.
In accordance with another aspect of the invention, the conjugate gradient maximization is based on local cross-correlation of corresponding regions around each point in the images.
In accordance with another aspect of the invention the composition criteria comprise deriving the deformation function by composition of a plurality of regularized gradients of the similarity measure such that the deformation exhibits essentially no singularities.
In accordance with another aspect of the invention, the step of performing a conjugate gradient maximization comprises: deriving respective deformations by composition of a plurality of regularized gradients of the similarity measure for obtaining the deformation function.
In accordance with another aspect of the invention, the step of deriving the deformation function comprises applying the algorithm:
wherein operator Gσ* denotes convolution by a Gaussian kernel,
In accordance with another aspect of the invention, the step of deriving a deformation comprises deriving a deformation by composition of displacements which are small as compared with the size of the images.
In accordance with another aspect of the invention, the step of deriving a deformation comprises deriving a deformation by composition of respective regularized gradients of the similarity measure.
In accordance with another aspect of the invention, the step of warping comprises computing the deformation composed with the floating image.
In accordance with another aspect of the invention, the step of warping comprises computing (I2∘φ)(x), wherein I2:→R denotes the floating image, φ:Ω→R3 denotes the deformation such that the similarity measure is maximized, and ∘ denotes composition of functions.
In accordance with another aspect of the invention, the step of computing comprises utilizing tri-linear interpolation at each voxel of the floating image being warped.
In accordance with another aspect of the invention, the step of acquiring a reference image and a floating image comprises: utilizing a medical imaging technique, including any of magnetic resonance imaging (MRI), X-ray imaging, and CT scan imaging.
In accordance with another aspect of the invention, the step of obtaining a reference image and a floating image comprises: utilizing a medical imaging technique for detection of at least one of tumors and potential tumors in breast cancer.
In accordance with another aspect of the invention, the step of obtaining a reference image and a floating image comprises: utilizing a medical imaging technique for obtaining images indicating suspect tissue exhibiting at least one of (a) a more rapid intake or wash-in of contrast agent and (b) a more rapid washout than adjacent, non-tumor tissue.
In accordance with another aspect of the invention, a method comprises a step of utilizing the motion-corrected image to detect suspect tissue through comparison of images of a patient made before and after at least one of such wash-in and washout.
In accordance with another aspect of the invention the conjugate gradient maximization is based on local cross-correlation of corresponding regions around each point in the images.
In accordance with another aspect of the invention the composition criteria comprise deriving the deformation function by composition of a plurality of regularized gradients of the similarity measure such that the deformation exhibits essentially no singularities.
In accordance with another aspect of the invention, the step of performing a conjugate gradient maximization comprises: deriving respective deformations by composition of a plurality of regularized gradients of the similarity measure for obtaining the deformation function.
In accordance with another aspect of the invention, a method for performing image motion compensation between a reference image and an initial floating image by computing a deformation function from an initial deformation function comprises:
In accordance with another aspect of the invention, the stop criterion comprises reaching at least one of: a predetermined maximum number of repetitions or iterations of the recited sequence of steps; a predetermined lower limit for the gradient; zero for the gradient; and a predetermined processing time limit.
In accordance with another aspect of the invention, a method for performing image motion compensation between a reference image and an initial floating image by computing a deformation function from an initial deformation function method comprises:
In accordance with another aspect of the invention, the iterations begin at a low resolution level and proceed through increasingly higher resolutions.
In accordance with another aspect of the invention, the predetermined stop criterion comprises reaching at least one of: a predetermined maximum number of repetitions or iterations of the recited sequence of steps; a predetermined lower limit for the gradient; zero for the gradient; and a predetermined processing time limit.
In accordance with another aspect of the invention, the step of acquiring reference and initial floating images comprises: utilizing a medical imaging technique, including any of magnetic resonance imaging (MRI), X-ray imaging, and CT scan imaging.
In accordance with another aspect of the invention, the step of acquiring reference and initial floating images comprises: utilizing a medical imaging technique for detection of at least one of tumors and potential tumors in breast cancer.
In accordance with another aspect of the invention, the step of acquiring reference and initial floating images comprises: utilizing a medical imaging technique for obtaining images indicating suspect tissue exhibiting a more rapid intake or wash-in of contrast agent, as well as a more rapid washout than adjacent, non-tumor tissue.
In accordance with another aspect of the invention, the invention comprises a step of utilizing the motion-corrected final warped floating image to detect suspect tissue through comparison of images of a patient made before and after such wash-in and/or washout.
In accordance with another aspect of the invention, the invention comprises a step of utilizing the retrieving at least one of the images from any of: a storage medium, a computer, a radio link, the Internet, an infrared link, an acoustic link, a scanning device, and a live imaging device.
In accordance with another aspect of the invention, a method for performing image motion compensation comprises: acquiring a reference image and an initial floating image; warping the initial floating image with a given initial deformation function so as to obtain a current warped floating image; computing local cross-correlation between respective corresponding regions in the reference image and the warped floating image;
In accordance with another aspect of the invention, a method for performing image motion compensation comprises:
In accordance with another aspect of the invention, the multi-resolution motion correction comprises:
In accordance with another aspect of the invention, a method for performing image motion compensation between images in a temporal sequence by computing a deformation function from an initial deformation function, the method comprises:
In accordance with another aspect of the invention, a system for performing image motion compensation comprises:
In accordance with another aspect of the invention, a computer program product comprises a computer useable medium having computer program logic recorded thereon for program code for performing image motion compensation by:
The invention will be more fully understood from the detailed description of exemplary embodiments which follows, in conjunction with the drawings, in which
In reference to
In the event that i is equal to k, Ji is defined as Ik and i is incremented by 1, the incremented result being then compared with n: if the incremented result is less than or equal to n, the process continues until the incremented result is greater than n, whereupon the process is terminated. The foregoing process results in a series of respective motion-corrected images, J1, J2 . . . Jn.
A more detailed description, including a multi-resolution technique follows next.
The input of the motion compensation module is a pair of images, one of which has been defined as the reference image as noted above, and the other being defined as a floating image, this being the image to which the compensating deformation is to be applied. The computations are performed using a multi-resolution scheme, which allows for large, global motions to be quickly recovered at low resolutions, bearing in mind that, as was previously mentioned, the images have general similarities. The deformation, or displacement, obtained at low resolution is used to initialize the search in the next finer resolution step. The deformation obtained at the finest or highest level of resolution is applied to the floating input image to yield the output, which is the desired motion corrected image.
More particularly, since for Breast MR images the number of planes (or slices) is usually much smaller than the number of columns or rows of each slice, only the size of the planes is reduced in the construction of the multi-resolution pyramid. This is done using a low-pass filter which is specially designed for reducing in half the sampling frequency with minimal loss of information when the size of the plane is reduced by omitting pixels.
Results are then extrapolated from the lower resolution levels. Thus, the motion estimated at a particular resolution is used as an initial estimate in the next finer level of resolution. This is done by re-sampling each component of the displacement field at twice the frequency using tri-linear interpolation. See the general definitions below in the subsections providing details on specific modules and operations used by the algorithm. The applicable general definitions are given below. For material on linear interpolation see, for example, the aforementioned textbook by Gonzalez, pp. 64 et seq.
Motion estimation is carried out within the terms of a single resolution. The estimation of the compensating deformation between a reference and a floating image within a given resolution level is a component of the system, preparatory to the subsequent steps to be further described below. It is done by performing a conjugate gradient maximization of a similarity measure between the two images, based on the local cross-correlation of corresponding regions around each point. The non-singularity of the deformation is ensured by a special composition technique when building the solution, as will be further explained below.
The flow diagram of the algorithm for the estimation of the displacement field between two images is depicted in
The following subsections provide details on specific modules and operations used by the algorithm. Listings of special mathematical symbols may be found in a number of mathematical textbooks such as, for example, Mathematics Handbook for Science and Engineering, by Lennart R{dot over (a)}de and Bertil Westergren; Birkhäuser Boston, 1995; pp. 522-523; and A Survey of Modern Algebra, by Garrett Birkhoff and Saunders Mac Lane; A K Peters, Ltd., 1997; pp. 486-488.
The two input images are denoted as I1:Ω→R and I2:→R, which means they are to be considered as functions from a domain Ω⊂R3 of Euclidean three-dimensional space into the set of real numbers R. At a point xεΩ, the pair of values (intensities) of these functions will be denoted as
I(x)≡[I1(x),I2(x)].
The goal of the motion correction component is to find a deformation φ:Ω→R3 such that the similarity measure S (defined hereinbelow) between I1 and I2∘φ is maximized. Here ∘ denotes composition of functions, that is
(I2∘φ)(x)≡I2(φ(x)).
To each deformation φ we associate a displacement field U:Ω→R3 such that φ=id+U, i.e. φ(x)=x+φ(x), ∀xεΩ. In other words, the motion correction module tries to find a displacement field U (which is a volume of three-dimensional vectors) that makes S(I1, I2∘φ) maximal. (In accordance with common usage, ∀ is the universal quantifier, where ∀x means “For all x, . . . ”)
Warping is the operation of computing (I2∘φ) (X). It requires tri-linear interpolation at each voxel of the image to be warped. See the box “Warp floating image” in
The present invention makes use of a known mathematical property of invertible deformations, namely, that the composition of invertible deformations results in an overall deformation which is itself inventible, to obtain appropriate deformation of an image for motion correction and utilizes deformation steps that are kept sufficiently small to avoid problems with singularities. Composition has been defined above and is represented by the symbol ∘.
Referring again to
the applicable algorithm is:
The operator Gσ* denotes convolution by a Gaussian kernel, whereas ∇S denotes the gradient of S with respect to φ (see below), and εk is the step size, which is made sufficiently small to ensure invertibility.
Regarding the computation of the local cross-correlation and its gradient, which is essentially in accordance with the algorithm set forth above, the results in this section are represent a condensation of the more extensive description to be found in the publication by the present inventor, herein incorporated by reference, as follows:
The local cross-correlation between I1 and I2 is defined by
where ν1,2(x), ν1(x) and ν2(x) are respectively the covariance and variances of the intensities of I1 and I2 around x. Its first order variation is well defined and defines a gradient given by
The function LCC is estimated as
All the required space dependent quantities like μ1(x) are computed by convolution with a Gaussian kernel (see below).
As concerns the conjugate gradient optimization, the explicit time discretization using a fixed time step corresponds to a steepest descent method without line search, which is generally quite inefficient. The system in accordance with the present invention performs line searching such that the step is optimal, and it uses a Fletcher-Reeves conjugate gradient minimization routine, essentially as described in the book William H. Press et al.: Numerical recipes in C, Cambridge University Press, 1988, to which reference is made for further details of this classical mathematical routine.
The conjugate gradient method allows about one order of magnitude reduction in the total number of iterations required. The gain in speed is much higher since the number of iterations at the finest level is very small, despite the fact that each iteration is slightly more costly.
The convolutions by a Gaussian kernel are approximated by recursive filtering using the smoothing operator introduced in R. Deriche, Fast algorithms for low-level vision, IEEE Transactions on Pattern Analysis and Machine Intelligence, 1(12):78-88, January 1990. conjugate gradient method
Given a discrete ID input sequence x(n), n=1, . . . , M, its convolution by the smoothing operator Sα(n)=k(α|n|+1)e−α|n| is calculated efficiently as:
The normalization constant k is chosen by requiring that ∫RSα(t)dt=1, which yields k+α/4.
This scheme is very efficient since the number of operations required is independent of the smoothing parameter α. The smoothing filter can be readily generalized to n dimensions by defining the separable filter
As will be apparent, the present invention is intended to be implemented with the use and application of a programmed digital computer.
The invention may be readily implemented, at least in part, in a software memory device and packaged in that form as a software product. This can be in the form of a computer program product comprising a computer useable medium having computer program logic recorded thereon for program code for performing image motion compensation utilizing the method of the present invention.
While the present invention has been explained by way of examples using illustrative exemplary embodiments relating to motion compensation in a temporal sequence of images in MR detection of potential tumors of the human breast, the invention is also generally applicable to the solution of problems requiring spatial alignment in other fields such as, but not limited to, the example of PET-CT registration.
It will be understood that the description by way of exemplary embodiments is not intended to be limiting and that various changes and substitutions not herein explicitly described may be made without departing from the spirit of the invention whose scope is defined by the claims following.
Specific reference is hereby made to U.S. Provisional Patent Application No. 60/574,037, entitled METHOD AND SYSTEM FOR MOTION COMPENSATION IN A TEMPORAL SEQUENCE OF IMAGES, filed May 25, 2004 in the name of Gerardo Hermosillo Valadez, the inventor in the present application, and of which the benefit of priority is claimed and whereof the disclosure is hereby incorporated herein by reference.
Number | Name | Date | Kind |
---|---|---|---|
6611615 | Christensen | Aug 2003 | B1 |
20020122576 | Weese et al. | Sep 2002 | A1 |
20030156111 | Joshi et al. | Aug 2003 | A1 |
20040260170 | Wood et al. | Dec 2004 | A1 |
20050113651 | Wood et al. | May 2005 | A1 |
Number | Date | Country | |
---|---|---|---|
20050265611 A1 | Dec 2005 | US |
Number | Date | Country | |
---|---|---|---|
60574037 | May 2004 | US |