A comparison of rule-based, k-nearest neighbor, and neural net classifiers for automated industrial inspection

Tai-Hoon Cho, R. Conners, P. Araman
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引用次数: 23

Abstract

As classifiers for use in automated industrial inspection, the rule-based, k-nearest-neighbor, and neural-network approaches are discussed. These approaches were implemented and tested for label verification in a machine vision system for hardwood lumber inspection. The test results, together with other considerations, have led to the selection of neural networks as the preferred method for doing the label verification in this machine vision system.<>
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基于规则、k近邻和神经网络的自动工业检测分类器的比较
作为用于自动化工业检测的分类器,本文讨论了基于规则的分类器、k近邻分类器和神经网络分类器。这些方法在硬木木材检验的机器视觉系统中实现并测试了标签验证。测试结果,连同其他考虑因素,导致选择神经网络作为在机器视觉系统中进行标签验证的首选方法
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