1 March 1998 Three-dimensional object recognitions from two-dimensional images using wavelet transforms and neural networks
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Three-dimensional object classification from 2-D IR images is shown. The wavelet transform is used for edge detection. Edge tracking is used for removing noise effectively in the wavelet transform. The invariant Fourier descriptor is used to describe the contour curves. Invariance under out-of-plane rotation is achieved by the feature space trajectory neural network working as a classifier.
Sylvain Deschenes, Yunlong Sheng, and Paul C. Chevrette "Three-dimensional object recognitions from two-dimensional images using wavelet transforms and neural networks," Optical Engineering 37(3), (1 March 1998). https://doi.org/10.1117/1.601908
Published: 1 March 1998
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Cited by 11 scholarly publications.
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KEYWORDS
Wavelet transforms

Infrared imaging

Object recognition

Image filtering

3D image processing

Edge detection

Wavelets

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