Abstract:
Warp-knit fabric surface is a patterned textured
surface with repetitive units on its surface. Only few researches
have been reported for detection of defects on patterned fabric
surfaces. In this paper, an anomaly detection method based on
self organizing map is proposed for detecting defects on warpknit
surfaces. The method consists of self organizing maps on two
levels. The method was applied to a set of images of 8 different
types of warp-knit surfaces, which included samples from the 8
categories of defects. According to the experimental results,
defect detection rates of proposed method are close to 80 percent
in most categories of defects.
Citation:
D. Wijesingha and B. Jayasekara, "Detection of Defects on Warp-knit Fabric Surfaces Using Self Organizing Map," 2018 Moratuwa Engineering Research Conference (MERCon), 2018, pp. 601-606, doi: 10.1109/MERCon.2018.8421944.