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Machine vision system for automatic inspection of surface defects in aluminum die casting

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journal contribution
posted on 2006-01-01, 00:00 authored by Yakov Frayman, H Zheng, Saeid Nahavandi
A camera based machine vision system for the automatic inspection of surface defects in aluminum die casting is presented. The system uses a hybrid image processing algorithm based on mathematic morphology to detect defects with different sizes and shapes. The defect inspection algorithm consists of two parts. One is a parameter learning algorithm, in which a genetic algorithm is used to extract optimal structuring element parameters, and segmentation and noise removal thresholds. The second part is a defect detection algorithm, in which the parameters obtained by a genetic algorithm are used for morphological operations. The machine vision system has been applied in an industrial setting to detect two types of casting defects: parts mix-up and any defects on the surface of castings. The system performs with a 99% or higher accuracy for both part mix-up and defect detection and is currently used in industry as part of normal production.

History

Journal

Journal of advanced computational intelligence and intelligent informatics

Volume

10

Issue

3

Pagination

281 - 286

Publisher

Fuji Technology Press Ltd

Location

Tokyo, Japan

ISSN

1343-0130

Language

eng

Publication classification

C1 Refereed article in a scholarly journal