Research on the knitting needle detection system of a hosiery machine based on machine vision

Autor: Zhang Zhouqiang, Xu Guangshen, Feng Zhi, Xuejing Liu, Feilei Wang, Bai Sihao, Jia Jiangtao
Rok vydání: 2020
Předmět:
Zdroj: Textile Research Journal. 90:1730-1740
ISSN: 1746-7748
0040-5175
DOI: 10.1177/0040517519899173
Popis: Problems with knitting needles are one of the main causes of production loss of fabric. In order to detect problems with knitting needles quickly and accurately, this paper proposes a hosiery knitting needle detection system based on machine vision. Meanwhile, according to the working condition of real hosiery knitting needles, a simulated needle cylinder rotary platform is built. The system can detect knitting needle problems, and the needle causing the issue can be identified as the beginning of the fabric defect appears. The production losses caused by the bending and fracture of knitting needles are reduced at the source. In the image processing, the vertical projection algorithm is introduced in the system, and the defect of image binarization is improved. At the same time, the multi-classification support vector machine based on the decision tree is used to realize the image classification. The experimental results show that the classification accuracy of the two levels classifiers in the system can reach 100% and 98%, and the best time of system detection is 0.348 s.
Databáze: OpenAIRE