Genetic Techniques for Pattern Extraction in Particle Boards Images

M. Gamassi, V. Piuri, F. Scotti, M. Roveri
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引用次数: 6

Abstract

Time-to-market and high product quality standards are pushing the use of automatic visual inspection systems for defect detection in a wide broad of applications. The defect detection of particle boards requires the identification of all the printed and natural wood defects that can occur. The availability of information about the particle board to inspect (e.g. the pattern used to print the surface of the board) could increase heavily the defect detection capability of a quality assessment system. Nevertheless, most of the times the pattern is not available during the defect detection phase (i.e. when the pattern changes quickly or when printing and defect detection are not performed by the same company). We propose a novel approach for pattern extraction based on genetic techniques to identify the printing pattern that can be used in defect classification systems. Experimental results show the valuable pattern extraction capabilities of the proposed approach
粒子板图像模式提取的遗传技术
上市时间和高产品质量标准正在推动在广泛应用中使用自动视觉检测系统进行缺陷检测。刨花板的缺陷检测需要识别所有可能发生的印刷和天然木材缺陷。关于要检查的刨花板的信息的可用性(例如用于打印刨花板表面的图案)可以大大增加质量评估系统的缺陷检测能力。然而,大多数情况下,在缺陷检测阶段,图案是不可用的(例如,当图案变化很快,或者当印刷和缺陷检测不是由同一家公司执行时)。提出了一种基于遗传技术的印刷图案提取方法,该方法可用于缺陷分类系统。实验结果表明,该方法具有良好的模式提取能力
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