Research on textile-vamp punching based on punching point gradient phase and edge significance

Author:

Meng Zhuo1,Zhang Hao1ORCID,Chen Yujie1,Sun Yize1ORCID

Affiliation:

1. College of Mechanical Engineering, Donghua University, Shanghai, China

Abstract

A visual technology to identify the punching points of a textile vamp to replace manual punching by machinery is proposed in this paper. This could solve several problems relating to the manual punching of textile vamp, such as high manual-punching strength, low efficiency, and poor punching accuracy. Unsharp mask guided filtering was adopted, to enhance the details of the textile-vamp punching points, considering the edge point position, gradient phase, and edge significance of the punching points, in building the template matching similarity measure function. A partial Hausdorff distance was proposed to sum and average values, to improve the degree of matching of punching point shape defects. A local search area of punching points to improve identification efficiency and punching evaluation criteria was established to evaluate the punching effects. The results showed that the matching similarity of the complete boundary was above 0.9. Positioning accuracy was 0.43 mm in the x-direction, 0.38 mm in the y-direction, and repeat positioning accuracy was 0.09 mm. The center average relative error was 5.03% and the relative error of the radius was 7.81%. Identification timeliness increased with the rotation angle, template size, and the number of punching points. When the rotation angle was between –180° and 180° and the number of punching points was 24, identification timeliness was 830 ms, which met productivity requirements. Textile-vamp punching grades A to D qualified, however, grades E and F were unqualified for punching.

Funder

The National Key R&D Program of China

international cooperation fund of science and technology commission of Shanghai municipality

Publisher

SAGE Publications

Subject

Polymers and Plastics,Chemical Engineering (miscellaneous)

Reference23 articles.

1. Zhu JY. Shoe upper feature point detection based on vision system. MS Thesis, Donghua University, Shanghai, 2021.

2. Zuo S. Optimization research of process parameters for machine screen printing on shoes-upper. MS Thesis, Donghua University, Shanghai, 2017.

3. Ye YT. Machine identification and digital positioning of punching mark of textile upper. MS Thesis, Donghua University, Shanghai, 2018.

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