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Artificial intelligence / Scale-space segmentation / Segmentation / Computing / Scale space / Speech recognition / Viterbi algorithm / Vector quantization / Smoothing / Image processing / Computer vision / Statistics
Date: 2006-07-01 13:02:25
Artificial intelligence
Scale-space segmentation
Segmentation
Computing
Scale space
Speech recognition
Viterbi algorithm
Vector quantization
Smoothing
Image processing
Computer vision
Statistics

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