Claims
- 1. A method for visualizing ST data comprising the steps of:
receiving the ST data, the ST data being indicative of an S spectrum of an image of an object; and, determining a collapsed S spectrum by reducing the dimensionality of the S spectrum based on principal component analysis absent prior knowledge of the frequency components of the ST data.
- 2. A method for processing ST data as defined in claim 1 wherein the ST data are indicative of a plurality of local S spectra, each local S spectrum corresponding to an image point of an image of an object,
and wherein the step of determining a collapsed S spectrum comprises the steps of:
determining principal component axes of each local S spectrum, determining for each local S spectrum a collapsed local S spectrum by projecting a magnitude of the local S spectrum onto at least one of its principal component axes, and, processing the collapsed local S spectra to extract features relating to a physical occurrence within the object therefrom.
- 3. A method for processing ST data as defined in claim 2 wherein the principal component axes are determined based on orthogonal eigenvectors of a covariance matrix associated with the local spectrum.
- 4. A method for processing ST data as defined in claim 3 wherein the magnitude of each local S spectrum is projected onto a first principal component axis.
- 5. A method for processing ST data as defined in claim 3 wherein the magnitude of each local S spectrum is projected onto a second principal component axis.
- 6. A method for processing ST data as defined in claim 3 wherein the magnitude of each local S spectrum is projected onto a first principal component axis providing a first collapsed S spectrum and onto a second principal component axis providing a second collapsed S spectrum.
- 7. A method for processing ST data as defined in claim 3 wherein the step of processing the collapsed local S spectra comprises analyzing the collapsed local S spectra for determining a frequency band indicative of the features relating to a physical occurrence within the object.
- 8. A method for processing ST data as defined in claim 3 wherein the step of processing the collapsed local S spectra comprises suppression of motion artifacts in the image.
- 9. A method for visualizing ST data as defined in claim 1 comprising the steps of:
determining a weight function capable of distinguishing frequency components within a frequency band; forming a texture map by calculating a scalar value from each principal component of the collapsed S spectrum using the weight function and assigning the scalar value to a corresponding position with respect to the image; and, displaying the texture map for extracting features relating to a physical occurrence within the object therefrom.
- 10. A method for visualizing ST data as defined in claim 9 comprising the step of analyzing the collapsed S spectrum for determining a frequency band indicative of the features relating to the physical occurrence within the object.
- 11. A method for visualizing ST data as defined in claim 10 wherein the collapsed S spectrum is analyzed using volume visualization.
- 12. A method for visualizing ST data as defined in claim 10 wherein the weight function is a continuous frequency dependent function.
- 13. A method for visualizing ST data as defined in claim 12 wherein the weight function is a Gaussian window function.
- 14. A method for visualizing ST data as defined in claim 11 wherein the weight function is a discontinuous frequency dependent function.
- 15. A method for visualizing ST data as defined in claim 10 wherein the scalar value is calculated as a moment of the collapsed S spectrum at the corresponding position.
- 16. A method for visualizing ST data as defined in claim 15 wherein the scalar value is calculated as mean frequency of the collapsed S spectrum at the corresponding position.
- 17. A method for visualizing ST data as defined in claim 15 wherein the scalar value is calculated as mean amplitude of the collapsed S spectrum at the corresponding position.
- 18. A method for processing ST data comprising the steps of:
providing the ST data; performing PCA on the ST data to determine PCA results; and, providing a visualization of image data within the Stockwell domain.
- 19. A method for processing ST data as defined in claim 18 absent prior knowledge of frequency content of the image data based on the PCA results.
- 20. A method for processing ST data as defined in claim 18 wherein the provided ST data are indicative of a plurality of local S spectra, each local S spectrum corresponding to an image point of an image of an object,
wherein the step of PCA includes the step of determining with PCA principal component axes of each local S spectrum, and wherein the principle component axes are used in the step of providing a visualization.
- 21. A method for processing ST data comprising the steps of:
sensing a signal received from an object and providing image signal data in dependence thereupon; determining a S spectrum by S transforming the image signal data; calculating a magnitude of each local S spectrum corresponding to an image point; determining a covariance matrix for each image point using the magnitude of the local S spectrum; determining principal component axes for each image point based on the covariance matrix; mapping for each image point frequency components of the local S spectrum onto respective principal component axes; partitioning for each image point the principal component axes into a plurality of bins having a predetermined width; and, determining for each image point a local collapsed S spectrum by summing for each bin amplitudes of frequencies falling within the bin and dividing by the bin width.
- 22. A method for processing ST data as defined in claim 21 wherein the S spectrum is determined by applying Fourier convolution.
- 23. A method for processing ST data as defined in claim 22 wherein the S spectrum is determined using FFT.
- 24. A method for processing ST data as defined in claim 23 comprising the steps of:
forming a texture map by determining for each image point a scalar value from the local collapsed S spectrum; and, displaying the texture map for extracting features relating to a physical occurrence within the object therefrom.
- 25. A system for displaying ST data comprising:
a processor for performing PCA on the ST data to determine PCA results; and, a display in data communication with the processor for providing a visualization of image data within the Stockwell domain based on the PCA results.
- 26. A system for displaying ST data as defined in claim 25 comprising a sensor in data communication with the processor for sensing image data, wherein the processor is for transforming the image data into the S domain to form the ST data.
- 27. A system for displaying ST data as defined in claim 26 wherein the sensor is for sensing MR signals.
- 28. A system for displaying ST data as defined in claim 25 comprising an interface for receiving user instructions for interactively visualizing the image data.
Parent Case Info
[0001] This application claims benefit from U.S. Provisional Application No. 60/378,962 filed May 10, 2002.
Provisional Applications (1)
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Number |
Date |
Country |
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60378962 |
May 2002 |
US |