Tool Damage Detection Method Based on Improved Threshold Segmentation Algorithm

Authors

  • Lunwen Peng
  • Shenghu Pan

DOI:

https://doi.org/10.54097/crqycw25

Keywords:

: Tool wear; Visual detection; Otsu: PSO.

Abstract

 In order to solve the problem that the current tool wear defects are difficult to be collected by the visual inspection system, an Otsu threshold segmentation algorithm based on particle swarm optimization is proposed.to detect tool wear The algorithm improved update strategy for inertia coefficients which effectively expanding the search scope of the algorithm and shortens the running time of the algorithm. By adding a perturbation equation to the particle swarm, solved the problem of traditional particle swarm optimization algorithms easily falling into local optima. Finally, an experimental platform is built to verify the effectiveness of the algorithm. This inspection method can achieve the identification of tool damage areas and the measurement of tool damage amount, and has advantages such as high recognition accuracy and fast running speed compared to traditional Otsu algorithm, Canny algorithm ,local threshold segmentation and so on. The research results have certain reference value for the actual tool defect detection system.

Downloads

Download data is not yet available.

References

DING Yuhui, Cao Yan, Fu Leijie, BAI Yu. Research status and Prospect of Image Processing Technology in Tool Wear Detection [J]. Manufacturing Technology & Machine Tool, 2020,(4): 56-62.

Ye Zukun, Li Heng, Cha Wenbin, He Yan, Wang Yulin. Tool damage visual detection method using local threshold segmentation [J]. Journal of Xi 'an Jiaotong University,2021, vol. 55 (4): 52-60.

Deng Xiaopeng, Wang Yan, Hong Yu, Hu Xiaofeng. Micro-drilling and Milling Tool wear Detection Method using adaptive region Growth [J]. Journal of Xi 'an Jiaotong University,2021, vol. 55.

Zhou Junjie, Yu Jianbo. Online Measurement of Machining tool wear based on Machine vision [J]. Journal of Shanghai Jiao Tong University,2021, vol. 55 (6): 741-749.

Li Shanshan1, Liu Libing1, Li Li1 et al. Nc Tool Wear State Detection Method Based on Region Growth Method [J]. Manufacturing Technology & Machine Tool, 2017, (2):132-135.

Liu Jianchun, Jiang Junjie, Zou Pilgrimage. Research on Wear Detection Method of End Milling Cutter Based on Machine Vision [J]. Manufacturing Technology & Machine Tool,2020,(1): 136-140.

Zhang Guihua, Feng Yanbo, Lu Weidong. Gray-scale and feature region acquisition of image processing [J]. Journal of Qiqihar University: Natural Science Edition, 2007,23(4):49-52.

Tang Jian. Research on solar multi-band image registration method [D]. Kunming University of Science and Technology.

Lu Yan. Research on image segmentation based on threshold algorithm [D]. Chongqing University,2011

Liu Guihong, Zhao Liang, Sun Jinguang, Wang Wang. An improved particle swarm optimization algorithm for Otsu image threshold segmentation [J]. Computer Science,2016,(3):

Dong Hongbin, Li Dongjin, Zhang Xiaoping. A Particle swarm optimization algorithm for Dynamic Adjustment of inertia weights [J]. Computer Science,2018,45(2):98-102139. (in Chinese).

AO Yongcai, Shi Yibing, Zhang Wei, Li Yanyun. Improved particle swarm optimization based on adaptive inertia weights [J]. Journal of University of Electronic Science and Technology of China,2014,(6): 874-880.

Cheng Wansheng, Zang Xizhe, Zhao Jie, CAI Hegao. Optics and Precision Engineering,2008,(10): 1907-1912. Improved PSO inertia factor for Otsu Threshold Search [J].

LIU Shenxiao, Wang Xuechun, Chang Chaowen. Otsu image segmentation method based on improved particle swarm optimization [J]. Computer Science,2013,(8): 293-295.

Zhang Xinjuan, Lei Xiujuan. Application of improved PSO algorithm in two-dimensional optimal threshold image segmentation [J]. Computer Engineering and Applications, 2011, (26).

Tian Xinghua. Research on improved particle swarm optimization based on Chaotic mapping [D]. Qingdao University, 2020.

Xu Zu. Iso 3685-1977 (E) Life test of single-edge turning tools [J]. Tool Technology,1979,(4): 55-65.

Qin Guohua, Yi Xin, Li Yilan, Xie Wenbin. Optical Precision Engineering,2014, vol. 22 (12): 3332-3341.

Downloads

Published

26-02-2024

Issue

Section

Articles

How to Cite

Peng, L., & Pan, S. (2024). Tool Damage Detection Method Based on Improved Threshold Segmentation Algorithm . Academic Journal of Science and Technology, 9(2), 230-236. https://doi.org/10.54097/crqycw25