Statistical approach to unsupervised defect detection and multiscale localization in two-texture images


Journal article


A. Gururajan, H. Sari-Sarraf, E. Hequet
2008

Semantic Scholar DOI
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APA   Click to copy
Gururajan, A., Sari-Sarraf, H., & Hequet, E. (2008). Statistical approach to unsupervised defect detection and multiscale localization in two-texture images.


Chicago/Turabian   Click to copy
Gururajan, A., H. Sari-Sarraf, and E. Hequet. “Statistical Approach to Unsupervised Defect Detection and Multiscale Localization in Two-Texture Images” (2008).


MLA   Click to copy
Gururajan, A., et al. Statistical Approach to Unsupervised Defect Detection and Multiscale Localization in Two-Texture Images. 2008.


BibTeX   Click to copy

@article{a2008a,
  title = {Statistical approach to unsupervised defect detection and multiscale localization in two-texture images},
  year = {2008},
  author = {Gururajan, A. and Sari-Sarraf, H. and Hequet, E.}
}

Abstract

We present a novel statistical approach to unsupervised de- tection and localization of a chromatic defect in a uniformly textured background. The test images are probabilistically modeled using Gauss- ian mixture models, and consequently defect detection is posed as a model-order selection problem. The statistical model is estimated using a modified Expectation-Maximization algorithm that aids in faster conver- gence of the scheme. A test image is segmented only if a defective region/blob has been declared to be present, and this improves the effi- ciency of the entire scheme. This work places equal emphasis on defect localization; hence, an elaborate statistical multiscale analysis is per- formed to accurately localize the defect in the image. The underlying idea behind the multiscale approach is that segmented structures should be stable across a wide range of scales. The efficacy of the proposed approach is successfully demonstrated on a large dataset of stained fabric images. The overall detection rate of the system is found to be 92% with a specificity of 95%. All of these factors make the proposed approach attractive for implementation in online industrial applications.


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