Knitting needle fault detection system for hosiery machine based on laser detection and machine vision

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Abstract

The knitting needle cylinder is one of the core parts of a hosiery machine. The operation of its needles can directly affect the production quality and efficiency of the hosiery machine. To reduce the production loss of a hosiery machine caused by knitting needle faults, a knitting needle fault detection system for hosiery machines based on a synergistic combination of laser detection and machine vision is proposed in this paper. When the system was operating normally, a photoelectric detector collected the laser signal reflected by the knitting needle and the system monitored the operation of the knitting needle using the ratio of adjacent peak-to-peak distances of the signals. When a fault signal was detected, the hosiery machine was stopped by the system immediately, and a charge-coupled device camera was used to take an image of the faulty knitting needle. After image preprocessing, the faulty knitting needle could be identified quickly and accurately using an image region size classifier based on a decision tree. The experimental results showed that a single image classification by the classifier could be performed in as little as 0.002 s.

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Zhang, Z., Bai, S., Xu, G. S., Liu, X., Jia, J., Feng, Z., & Wang, F. (2021). Knitting needle fault detection system for hosiery machine based on laser detection and machine vision. Textile Research Journal, 91(1–2), 143–151. https://doi.org/10.1177/0040517520935210

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