Vision-Based Defects Detection for Glass Production based on Improved Image Processing Method
Abstract
Defect is a failure that harms the value, quality or function of a product. In glass manufacturing industry, production defects directly contributes to low quality and a failure for the organization. It will be tiresome process to have manual inspection especially for a large size of glass product. Furthermore, manual inspection processes are typically time consuming and exposed to human error. This article presents a vision-based inspection to detect glass defects using image processing techniques. The result obtained shows that defects can be successfully detected based on the method used.
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References
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