Automatic visual inspection of woven textiles using a two-stage defect detector
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Automatic inspection of woven textile fabric is discussed. A
two-stage detection process is adopted, with the second stage involving
set of novel contextual decision fusion techniques. Three significant
problems are addressed: (1) texture feature extraction: Fourier transform
features are found to be well matched to the spatially periodic nature of
the woven pattern; (2) detection of localized flaw patterns: since prior
probabilities are impossible to estimate, and we cannot hope to enumerate
all defect classes, a Neyman-Pearson approach is adopted, i.e., flaw
detection is via measured deviation from nominal; and (3) detection of
extended flaw patterns: the most common flaws are characterized by
linear or other cluster shaped patterns; although these are weakly detectable
by local detectors, they may be ignored when local detector
sensitivity is set to achieve tolerably low false-alarm rates; a localextended
contextual decision fusion technique using morphological filtering
enables us to achieve very low composite false-alarm rate. The performance
of the system is evaluated on samples of denim fabric
containing real defects. The predicted composite false-alarm rate is of
the order 1 in 1013, or equivalent to 1 per 100 km of fabric roll. Experimental
results demonstrate the compatibility of this favorable false-alarm
rate with the reliable detection of flaws, which have been chosen for their
subtlety and detection difficulty.