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A self-training visual inspection system with a neural network classifier

机译:具有神经网络分类器的自训练视觉检查系统

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A self-training visual inspection system using a connectionist classifier is presented. The system is composed of a control unit, a signal-processing unit, and a connectionist classifier. The control unit both generates the training set and performs the function of teacher to the classifier. The second unit compresses the two-dimensional image into a one-dimensional signal. Potential flaws extracted from the one-dimensional signal are sent to the classifier. The classifier used in this work is a standard multilayer connectionist neural network that uses backpropagation for learning. The system is applied to two inspection tasks involving two-dimensional surfaces characterized by a known intensity distribution. Diagnostics for evaluating the classifier are presented, along with an evaluation of the classifier's performance.
机译:提出了一种使用连接器分类器的自训练视觉检查系统。该系统由控制单元,信号处理单元和连接分类器组成。控制单元既生成训练集,又执行教师到分类器的功能。第二单元将二维图像压缩成一维信号。从一维信号中提取的潜在缺陷将发送到分类器。在这项工作中使用的分类器是一个标准的多层连接神经网络,它使用反向传播进行学习。该系统被应用于涉及以已知强度分布为特征的二维表面的两个检查任务。提出了用于评估分类器的诊断程序,以及对分类器性能的评估。

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