Claims
- 1. A method for removing scatter in an image, said method comprising:
acquiring data of an object of interest; and using an iterative equation including a thickness-dependent kernel modulation factor to reconstruct an image of the object.
- 2. A method in accordance with claim 1 wherein said using the iterative equation including a thickness-dependent kernel modulation factor comprises using a thickness-dependent modulation factor ak in accordance with:
- 3. A method in accordance with claim 1 further comprising estimating a kernel re-normalization map for use in the iterative equation.
- 4. A method in accordance with claim 3 wherein estimating the kernel re-normalization map comprises estimating the re-normalization map according to N(m)˜eμdb(m):
where:
N(m) is the re-normalization map of a pixel m; μ is a mean attenuation coefficient for an X-ray photon spectrum in breast equivalent material; and db(m) is a distance between pixel m and a closest pixel belonging to an object boundary.
- 5. A method in accordance with claim 3 wherein estimating the kernel re-normalization map for use in the iterative equation comprises incorporating the kernel re-normalization map into the iterative equation b(n) according to:
- 6. A method in accordance with claim 3 wherein estimating a re-normalization map for use in the iterative equation comprises estimating a re-normalization map for each pixel outside of the breast boundary by calculating a distance between the pixel and a closest pixel belonging to the breast boundary.
- 7. A method in accordance with claim 1 wherein using an iterative equation including a thickness-dependent kernel modulation comprises using an iterative equation including a compressed breast thickness-dependent kernel modulation factor to reconstruct an image of the object.
- 8. A method in accordance with claim 1 further comprising subtracting a scatter signal estimate from a measured image during each iteration.
- 9. A method in accordance with claim 8 wherein subtracting a scatter signal estimate comprises subtracting a scatter signal estimate generated using at least one convolution.
- 10. A method in accordance with claim 9 wherein using at least one convolution comprises using at least one convolution computed in Fourier space.
- 11. A method in accordance with claim 9 wherein using at least one convolution comprises using two one-dimensional convolutions.
- 12. A method in accordance with claim 1 further comprising estimating a scatter signal and using the scatter signal estimate in a scatter correction algorithm to estimate a direct image.
- 13. A medical imaging system for removing scatter in an image, said medical imaging system comprising:
a detector array; at least one radiation source; and a computer coupled to said detector array and radiation source and configured to:
acquire data of an object of interest; estimate a re-normalization map according to N(m)˜eμdb(m): where:
N(m) is the re-normalization map of a pixel m; μ is a mean attenuation coefficient for an X-ray photon spectrum in breast equivalent material; and db(m) is a distance between pixel m and a closest pixel belonging to an object boundary; use an iterative equation including a thickness-dependent kernel modulation factor in accordance with 19ak=p_kp_k0,where:
{overscore (p)}k is a norm of a scatter kernel p; and {overscore (p)}k0 is a norm of a scatter kernel for a compression thickness of the object; and incorporate the re-normalization map into the iterative equation b(n) according to: 20b(n)=y2l+(2l-12l)b(n-1)-N p*ab1(n-1)2l-p*ab2(n-1)2l,where:
y is a measured image; p is a scatter kernel; {overscore (p)}k is a norm of a scatter kernel p; l is an integer that satisfies the condition {overscore (p)}<2l; subscript 1 is the direct events outside of the object boundary; subscript 2 is the direct events inside the object boundary; a is the kernel modulation factor; N is the kernel re-normalization map; bn is an estimate of the image formed by directly transmitted photons; and n is a quantity of iterations.
- 14. A method for removing scatter in an image, said method comprising:
acquiring data of an object of interest; and using an iterative equation to reconstruct an image of the object when a scatter fraction is greater than approximately 0.5.
- 15. A method in accordance with claim 14 further comprising:
defining an initial scatter kernel estimation; re-defining an initial (zeroth estimate) of a direct image re-defining the direct image; and defining an initial direct estimation using the initial scatter kernel estimation and the re-defined direct image.
- 16. A method in accordance with claim 14 further comprising selecting a quantity l such that {overscore (p)}<2l:
where:
{overscore (p)} is the scatter kernel norm; and l is an integer that satisfies the condition {overscore (p)}<2l;
- 17. A method in accordance with claim 14 further comprising selecting an iterative equation such that:
b(0)=y−s(0), is an initial estimate, with b(n)=α·b(n−1)+(1−α)·(y−p*b(n−1)), is an iterative update, where s(0)=p*y. wherein:
y is a measured image; p is a scatter kernel; α is the kernel modulation factor; N is the kernel re-normalization map; bn is an estimate of the image formed by directly transmitted photons; and n is a quantity of iterations.
- 18. A method in accordance with claim 17 further comprising selecting α such that
- 19. A method in accordance with claim 17 further comprising selecting α such that
- 20. A method in accordance with claim 15 wherein defining an initial scatter estimation comprises defining an initial scatter estimation s(0) in accordance with
- 21. A method in accordance with claim 15 wherein defining an initial direct estimation comprises defining an initial direct estimation in accordance with
- 22. A method in accordance with claim 15 wherein re-defining a direct image comprises re-defining a direct image in accordance with b(0)=y−s(0),
where:
b is a direct image; s is a scatter image; and y is an image including the direct image and the scatter image.
- 23. A computer readable medium encoded with a program executable by a computer for removing scatter from an image, said program configured to instruct the computer to:
acquire data of an object of interest; define an initial scatter signal estimation in accordance with 25s(0)=p*y1+p_=p*(b+p*b)1+p_=p*b*(δ+p)1+p_,where:
y is a measured image; δ is the Kronecker delta function; p is a scatter kernel; p is a scatter kernel norm; l is an integer that satisfies the condition {overscore (p)}<2l; b is a direct image; re-define a direct image; define an initial direct estimation in accordance with 26b(n)=b2l+p*b2l+(2l-12lδ-p2l)*b(n-1);where:
n is a quantity of iterations; use an iterative equation to reconstruct an image of the object when a scatter fraction is greater than approximately 0.5; and select a sub-iteration quantity l such that {overscore (p)}<2l.
- 24. A computer readable medium encoded with a program executable by a computer for removing scatter from an image, said program configured to instruct the computer to:
acquire data of an object of interest; and use an iterative equation including a thickness-dependent kernel modulation factor to reconstruct an image of the object.
- 25. A computer readable medium in accordance with claim 23 wherein to use the iterative equation including a thickness-dependent kernel modulation factor, said program configured to use a thickness-dependent modulation factor ak in accordance with:
- 26. A computer readable medium in accordance with claim 23 wherein said program further configured to estimate a re-normalization map for use in the iterative equation.
- 27. A computer readable medium in accordance with claim 25 wherein to estimate the re-normalization map, said computer further configured to estimate the re-normalization map according to N(m)˜eμdb(m):
where:
N(m) is the re-normalization map of a pixel m; μ is a mean attenuation coefficient for an X-ray photon spectrum in breast equivalent material; and db(m) is a distance between pixel m and a closest pixel belong to an object boundary.
- 28. A computer readable medium in accordance with claim 25 wherein to estimate the re-normalization map for use in the iterative equation, said program further configured to incorporate the re-normalization map into the iterative equation b(n) according to:
- 29. A computer readable medium in accordance with claim 25 wherein to estimate a re-normalization map for use in the iterative equation, said program further configured to estimate a re-normalization map for each pixel outside of the breast boundary by calculating a distance between the pixel and a closest pixel belonging to the breast boundary.
- 30. A medical imaging system for removing scatter in an image, said medical imaging system comprising:
a detector array; at least one radiation source; and a computer coupled to said detector array and radiation source and configured to:
acquire data of an object of interest; and use an iterative equation to reconstruct an image of the object when a scatter fraction is greater than approximately 0.5.
- 31. A medical imaging system in accordance with claim 30 wherein said computer further configured to:
define an initial scatter kernel estimation; re-define a direct image; and define an initial direct estimation using the initial scatter kernel estimation and the re-defined direct image.
- 32. A medical imaging system in accordance with claim 30 wherein said computer further configured to select a quantity l such that {overscore (p)}<2l:
where:
{overscore (p)} is the scatter kernel norm; and l is an integer that satisfies the condition {overscore (p)}<2l.
- 33. A medical imaging system in accordance with claim 31 wherein to define an initial scatter estimation, said computer further configured to define an initial scatter estimation s(0) in accordance with
- 34. A medical imaging system in accordance with claim 31 wherein to define an initial direct estimation, said computer further configured to define an initial direct estimation in accordance with
- 35. A medical imaging system in accordance with claim 31 wherein to re-define a direct image, said computer further configured to re-define a direct image in accordance with b(0)=y−s(0),
where:
b is a direct image; s is a scatter image; and y is an image including the direct image and the scatter image.
STATEMENT REGARDING FEDERALLY SPONSORED RESEARCH & DEVELOPMENT
[0001] The government may have rights in this invention pursuant to Subcontract 22287 issued from the Office of Naval Research/Henry M. Jackson Foundation.