Ls. Jamalaldin et al., APPLICATION OF NONLINEARITY TO WAVELET-TRANSFORMED IMAGES TO IMPROVE CORRELATION FILTER PERFORMANCE, Applied optics, 36(35), 1997, pp. 9212-9224
A useful filter for pattern recognition must strike a compromise betwe
en the conflicting requirements of in-class distortion tolerance and o
ut-of-class discrimination. Such a filter will be bandpass in nature,
the high-frequency response being attenuated to provide less sensitivi
ty to in-class variations, while the low frequencies must be removed,
since they compromise the discrimination ability of the filter. A conv
enient bandpass is the difference of Gaussian (DOG) function, which pr
ovides a close approximation to the Laplacian of Gaussian. We describe
the effect of a preprocessing operation applied to a DOG filtered ima
ge. This operation is shown to result in greater tolerance to in-class
variation while maintaining an excellent discrimination ability. Addi
tionally, the introduction of nonlinearity is shown to provide greater
robustness in the filter response to noise and background clutter in
the input scene. (C) 1997 Optical Society of America.