Claims
- 1. A method of automatically compensating a multi- or hyper-spectral, multi-pixel image for atmospheric effects, comprising:
resolving a plurality of spectrally-diverse pixels from the image; determining a spectral baseline from the spectrally-diverse pixels; determining a statistical spectral deviation of the spectrally-diverse pixels; normalizing the statistical spectral deviation by applying a scale factor; and compensating image pixels with both the spectral baseline and the normalized spectral deviation.
- 2. The image compensation method of claim 1 wherein the compensating step comprises subtracting the spectral baseline from the image pixels to accomplish partially-compensated pixels.
- 3. The image compensation method of claim 2 wherein the compensating step further comprises dividing the partially-compensated pixels by the normalized spectral deviation.
- 4. The image compensation method of claim 1 wherein the resolving step takes place with a spectral end member selection algorithm.
- 5. The image compensation method of claim 1 wherein the resolving step takes place with a clustering algorithm.
- 6. The image compensation method of claim 1 wherein the resolving step is accomplished manually.
- 7. The image compensation method of claim 1 wherein at least ten end members are resolved.
- 8. The image compensation method of claim 1 wherein the resolving step takes place using a subset of spectral bands that span the spectrum of the image.
- 9. The image compensation method of claim 1 further comprising screening anomalous pixels out of the image pixels before the resolving step.
- 10. The image compensation method of claim 9 wherein the screening step comprises removing pixels containing clouds.
- 11. The image compensation method of claim 1 wherein the spectral baseline determining step takes place using a linear regression method.
- 12. The image compensation method of claim 1 wherein the spectral baseline determining step comprises determining the excess reflectance at relatively short wavelengths relative to a flat spectral reflectance material.
- 13. The image compensation method of claim 1 wherein the spectral baseline determining step comprises determining the darkest signal from all of the image pixels for each spectral band.
- 14. The image compensation method of claim 1 wherein the spectral baseline determining step comprises determining the darkest signal in any spectral band from all of the spectrally-diverse pixels.
- 15. The image compensation method of claim 14 wherein the spectral baseline determining step comprises subtracting a constant reflectance contribution.
- 16. The image compensation method of claim 15 wherein the spectral baseline determining step further comprises setting the constant reflectance contribution to match the darkest signal at a reference wavelength.
- 17. The image compensation method of claim 1 wherein the spectral baseline determining step is based on using a radiative-transfer code to compute the baseline based on the determined aerosol and molecular optical properties
- 18. The image compensation method of claim 1 wherein the statistical spectral deviation determining step comprises determining the standard deviation of the spectrally-diverse pixels.
- 19. The image compensation method of claim 1 wherein the normalizing step comprises normalizing in a spectral band in which the sun-surface-sensor path spectral transmittance factor is close to unity.
- 20. The image compensation method of claim 1 wherein the normalizing step comprises resolving at least two spectral window bands that do not have a significant contribution from water absorption, correcting for Rayleigh scattering, using the spectral deviations of these window bands to retrieve an aerosol optical depth, and using the optical depth to normalize.
- 21. The image compensation method of claim 1 wherein the normalizing step involves establishing the scale factor such that the maximum retrieved reflectance value for any wavelength and pixel of the spectrally-diverse pixels is unity.
- 22. The image compensation method of claim 1 wherein the normalizing step comprises comparing the spectrally-diverse pixels to a predetermined set of spectra of different, known materials.
- 23. The image compensation method of claim 1 further comprising refining the spectrally-diverse pixels to remove spectrally-diverse pixels that contain undesirable spectral features, the refining step taking place after the normalizing step and before the compensating step.
- 24. The image compensation method of claim 23 wherein the refining step comprises removing pixels with an abrupt reflectance change around about 700 nm.
- 25. The image compensation method of claim 23 wherein the refining step comprises removing pixels that have the greatest effect on the smoothness of the statistical spectral deviation.
- 26. The image compensation method of claim 23 wherein the refining step comprises introducing a wavelength dependence into a normalization factor such that selected spectrally-diverse pixels are made to agree with corresponding known library spectra as closely as possible.
- 27. A method of automatically determining a measure of atmospheric aerosol optical properties using a multi- or hyper-spectral, multi-pixel image, comprising:
resolving a plurality of spectrally-diverse pixels from the image; determining a statistical spectral deviation of the spectrally-diverse pixels; correcting the statistical spectral deviation for non-aerosol transmittance losses; and deriving from the statistical spectral deviation one or more wavelength-dependent aerosol optical depths.
- 28. The atmospheric optical properties measurement method of claim 27 wherein the resolving step takes place with a spectral end member selection algorithm.
- 29. The atmospheric optical properties measurement method of claim 27 wherein the resolving step takes place with a clustering algorithm.
- 30. The atmospheric optical properties measurement method of claim 27 wherein the resolving step is accomplished manually.
- 31. The atmospheric optical properties measurement method of claim 27 wherein at least ten end members are resolved.
- 32. The atmospheric optical properties measurement method of claim 27 wherein the resolving step takes place using a subset of spectral bands that span the spectrum of the image.
- 33. The atmospheric optical properties measurement method of claim 27 further comprising screening anomalous pixels out of the image pixels before the resolving step.
- 34. The atmospheric optical properties measurement method of claim 33 wherein the screening step comprises removing pixels containing opaque clouds and cirrus clouds.
- 35. The atmospheric optical properties measurement method of claim 27 wherein the statistical spectral deviation determining step comprises determining the standard deviation of the spectrally-diverse pixels.
- 36. The atmospheric optical properties measurement method of claim 27 wherein the correcting step involves using a radiative transfer code.
- 37. The atmospheric optical properties measurement method of claim 27 wherein the deriving step involves using a radiative transfer code.
- 38. The atmospheric optical properties measurement method of claim 27 wherein the deriving step comprises performing a fit of the statistical spectral deviation to an analytical representation of the aerosol transmittance.
- 39. The atmospheric optical properties measurement method of claim 27 wherein the deriving step comprises performing a fit of the statistical spectral deviation to a radiative transfer code.
- 40. A method of automatically determining a measure of atmospheric gaseous optical properties using a multi- or hyper-spectral, multi-pixel image, comprising:
resolving a plurality of spectrally-diverse pixels from the image; determining a statistical spectral deviation of the spectrally-diverse pixels; and deriving from the statistical spectral deviation wavelength-dependent gaseous optical depths.
- 41. The atmospheric gaseous optical properties determination method of claim 40 wherein the resolving step takes place with a spectral end member selection algorithm.
- 42. The atmospheric gaseous optical properties determination method of claim 40 wherein the resolving step takes place with a clustering algorithm.
- 43. The atmospheric gaseous optical properties determination method of claim 40 wherein the resolving step is accomplished manually.
- 44. The atmospheric gaseous optical properties determination method of claim 40 wherein at least ten end members are resolved.
- 45. The atmospheric gaseous optical properties determination method of claim 40 wherein the resolving step takes place using a subset of spectral bands that span the spectrum of the image.
- 46. The atmospheric gaseous optical properties determination method of claim 40 wherein the statistical spectral deviation determining step comprises determining the standard deviation of the spectrally-diverse pixels.
- 47. The atmospheric gaseous optical properties determination method of claim 40 wherein the deriving step comprises selecting reference spectral bands in molecular absorption window regions, selecting molecular absorption bands, and deriving a gaseous optical depth using the statistical spectral deviations at the selected bands.
- 48. The atmospheric gaseous optical properties determination method of claim 47 wherein the deriving step comprises selecting two reference bands nearby an absorption band, linearly combining the reference bands to estimate the non-absorbing standard deviation at the wavelength of the absorption band, forming a ratio of the absorption and estimated non-absorbing standard deviations, and deriving a gaseous optical depth for the absorption band using the ratio.
GOVERNMENT RIGHTS
[0001] This invention was made with Government support under Contract F19628-02-C-0054 awarded by the Department of the Air Force. The Government has certain rights in this invention.