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Image processing / Feature detection / Statistics / Psychometrics / Image segmentation / Mathematics / Thresholding / Statistical theory / Canny edge detector / Edge detection / Threshold / Background subtraction
Date: 2010-10-23 12:03:50
Image processing
Feature detection
Statistics
Psychometrics
Image segmentation
Mathematics
Thresholding
Statistical theory
Canny edge detector
Edge detection
Threshold
Background subtraction

Two thresholds are better than one

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Source URL: vast.uccs.edu

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