International Conference on Information and Communication Technology Convergence (ICTC) 2015, pp.783-786
Publisher
IEEE
Language
English
Type
Conference Paper
Abstract
We propose a vision-based automatic inspection system for machine parts using a novel image processing method. We also built a standalone inspection system using low-cost computing hardware, camera, and lens. Our system inspects rough spot or unwanted particles, which are called “burr”, on machine parts after they are manufactured by CNC machines. A burr is side effects during machining operations. It causes many problems in assembling tasks or brings out machine failure at working time. To automate screening out defected goods, which have burrs, we proposed a low cost vision system and image processing method. Furthermore, we evaluated the accuracy of the proposed method using burr detection rates.
KSP Keywords
Automatic inspection system, Burr detection, CNC machines, Image processing(IP), Image processing method, Low-cost, Side effects, Vision system, Working time, detection rate(DR), inspection method
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