Claims
- 1. A method for deconvoluting scanning probe microscopy images comprising:
(a) obtaining at least one topographic data set of a first sample using a physical property scanning probe microscope, said first sample having a known physical property; (b) obtaining at least one physical property/topographic data set of the first sample using a physical property scanning probe microscope; (c) applying a neural network to the physical property/topographic data set and the topographic data set of the first sample such that the neural network learns how to deconvolute the surface topographic effects from the physical property/topographic data set; (d) obtaining a physical property/topographic data set of a second sample using the physical property scanning probe microscope; and (e) using the neural network to deconvolute the physical property/topographic data set of the second sample to obtain a physical property data set of the second sample.
- 2. The method of claim 1, further comprising displaying, printing or plotting an image of the second sample based upon the physical property data set of the second sample.
- 3. The method of claim 1, wherein the physical property is a thermal property and wherein the physical property scanning probe microscope is a thermal scanning probe microscope.
- 4. The method of claim 3, wherein the thermal property is thermal conductivity.
- 5. The method of claim 3, wherein the thermal property is thermal expansivity.
- 6. The method of claim 1, wherein the physical property data set forms an image of the second sample, further comprising enhancing the image of the second sample by deriving a histogram distribution of the number of pixels versus intensity for the image.
- 7. The method of claim 6, comprising fitting Gaussian distributions to peaks in the histogram, and using an intersection between fitted peaks as a decision boundary.
- 8. The method of claim 7, comprising re-coloring the image of the second sample by assigning pixels to phases according to the decision boundary.
- 9. A method for creating an image reflecting a physical property of a surface of a sample comprising:
(a) training a neural network to separate topographic effects from physical property effects; (b) obtaining a data set including both physical property effects and topographic effects; and (c) applying the neural network to separate the topographic effects from the physical effects; (d) generating an image reflecting variations in the physical property of the surface of the sample.
- 10. The method of claim 9, wherein the data set is obtained using a physical property scanning probe microscope that measures the physical property of sample surfaces.
- 11. The method of claim 10, wherein the physical property scanning probe microscope is a thermal scanning probe microscope.
- 12. The method of claim 11, wherein the physical property is thermal conductivity.
- 13. The method of claim 11, wherein the physical property is thermal expansivity.
- 14. The method of claim 9, further comprising fitting Gaussian distributions to peaks in a histogram distribution of the number of pixels versus intensity for the image.
- 15. The method of claim 14, further comprising enhancing the image by assigning pixel values based upon the intersection between fitted peaks.
- 16. An apparatus for obtaining images reflecting a physical property of a surface of a sample comprising:
(a) a physical parameter scanning probe microscope; and (b) a neural network, wherein the neural network has been trained to separate topographic effects from physical property effects; and wherein the neural network is used to separate the topographic effects from the physical effects to generate an image reflecting variations in the physical property of the surface of the sample.
- 17. The apparatus of claim 16, further comprising means for enhancing the image.
- 18. The apparatus of claim 16, wherein the physical property is a thermal property.
- 19. The apparatus of claim 18, wherein the thermal property is thermal conductivity.
- 20. The apparatus of claim 18, wherein the thermal property is thermal expansivity.
- 21. A thermal scanning probe microscope comprising:
(a) a cantilever arm; (b) a thermal probe extending from said cantilever arm; (c) means for scanning the thermal probe across the surface of a sample, and for recording thermal and topographic data as a function of position on the sample to obtain a data set reflecting thermal and topographic properties of the surface of the sample; (d) a neural network for separating topographic effects from physical effects in the data set; and (e) means for displaying an image reflecting the thermal properties of the sample.
- 22. The thermal scanning microscope of claim 21, wherein the thermal data is thermal conductivity data.
- 23. The thermal microscope of claim 22, wherein the thermal data is thermal expansivity data.
- 24. The thermal microscope of claim 23, further comprising means for enhancing the image reflecting the thermal properties of the sample.
- 25. A method for deconvoluting the effect of topography from a thermal conductivity measurement using a neural network, comprising the steps of:
in a training phase of using the neural network: (a) obtaining a sample of a material having a smooth surface; (b) determining a true thermal conductivity of the sample; (c) obtaining another sample of the material, the another sample having a rough surface; (d) selecting a point on the rough surface; (e) determining a local topography at the selected point; (f) measuring a thermal conductivity at the selected point; and (g) storing the selected point, the local topography, the true thermal conductivity of the material and the measured thermal conductivity at the selected point in a table; (h) training the neural network using the table; and in the measurement phase of using the neural network:
(i) obtaining a sample to be tested; (j) selecting a point on the surface of the sample to be tested; (k) determining a local topography around the point selected on the sample to be tested; (l) measuring a thermal conductivity at the point selected on the sample to be tested; and (m) applying the local topography around the point selected on the sample to be tested and the measured thermal conductivity at the point selected on the sample to be tested to the neural network to deconvolute the effects of topography from thermal conductivity.
- 26. The method recited in claim 26, further comprising the step of repeating steps (d)-(h) for at least one additional selected point on the surface of the another sample.
- 27. The method recited in claim 25, further comprising the step of repeating steps (a)-(h) using at least one additional sample material.
- 28. The method recited in claim 26, further comprising the step of repeating steps (a)-(h) using at least one additional sample material.
- 29. The method recited in claim 25, where in the local topographies determined in steps (e) and (k) use at least eight neighbor points to the selected points.
- 30. The method recited in claim 25, wherein the local topographies determined in steps (e) and (k) use less than eight neighbor points to the selected points.
- 31. A method for deconvoluting the effects of topography from a thermal conductivity measurement, comprising the steps of:
(a) selecting a point on the surface of a sample of a material having a true thermal conductivity; (b) determining a local topography around the selected point; (c) measuring a thermal conductivity at the selected point; (d) using the local topography, the measured thermal conductivity and the true thermal conductivity to estimate the effect of topography on the measured thermal conductivity; (e) storing the estimate of the effect of topography on the measured thermal conductivity; (f) selecting a point on the surface of a sample of a test material; (g) determining a local topography around the selected point on the surface of the sample of the test material; (h) measuring a thermal conductivity at the selected point on the surface of the sample of the test material; and (i) deconvoluting the effect of topography on the measured thermal conductivity at the selected point on the surface of the sample of the test material using the stored estimate of the effect of topography on the measured thermal conductivity, the determined local topography around the selected point on the surface of the sample of the test material and the measured thermal conductivity at the selected point on the surface of the sample of the test material.
- 32. The method recited in claim 31, further comprising the step of measuring the true thermal conductivity.
- 33. The method recited in claim 32, further comprising the step of using an average thermal conductivity measured at one or more points in a substantially smooth portion of a surface of the sample as the true thermal conductivity.
- 34. The method recited in claim 31, further comprising the step of training a neural network to estimate the effect of topography on the measured thermal conductivity.
- 35. The method recited in claim 31, further comprising the step of repeating steps (a)-(d) on a plurality of samples.
- 36. The method recited in claim 31, further comprising the step of repeating steps (f)-(i) for a plurality of points on the surface of the sample of the test material.
- 37. A system for deconvoluting the effects of topography from a thermal conductivity measurement, comprising the steps of:
means for selecting a point on the surface of a sample of a material having a true thermal conductivity; means for determining a local topography around the selected point; means for measuring a thermal conductivity at the selected point; means for using the local topography, the measured thermal conductivity and the true thermal conductivity to estimate the effect of topography on the measured thermal conductivity; means for storing the estimate of the effect of topography on the measured thermal conductivity; means for selecting a point on the surface of a sample of a test material; means for determining a local topography around the selected point on the surface of the sample of the test material; means for measuring a thermal conductivity at the selected point on the surface of the sample of the test material; and means for deconvoluting the effect of topography on the measured thermal conductivity at the selected point on the surface of the sample of the test material using the stored estimate of the effect of topography on the measured thermal conductivity, the determined local topography around the selected point on the surface of the sample of the test material and the measured thermal conductivity at the selected point on the surface of the sample of the test material.
- 38. The method recited in claim 37, further comprising means for measuring the true thermal conductivity.
- 39. The method recited in claim 38, further comprising means for using an average thermal conductivity measured at one or more points in a substantially smooth portion of a surface of the sample as the true thermal conductivity.
- 40. The method recited in claim 37, further comprising means for training a neural network to estimate the effect of topography on the measured thermal conductivity.
Parent Case Info
[0001] The present application claims the benefit of U.S. Provisional Application 60/301,129, filed Jun. 28, 2001, which is hereby incorporated by reference herein in its entirety.
Provisional Applications (1)
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Number |
Date |
Country |
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60301129 |
Jun 2001 |
US |