智能制造环境下三维机械零件识别的机器视觉

Yingen Xiong, Freddie Quek
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引用次数: 10

摘要

提出了一种用于智能制造环境的三维机器视觉方法。该方法利用神经网络技术为解决三维识别过程中的计算难题提供了有效的方法。识别过程可分为两个部分。首先是3D重建。提出了一种基于小波分析的方法。用小波分析方法解决了立体匹配问题。该过程采用二进离散小波分析,实现了全局优化的立体匹配过程。构建了连贯的分层匹配策略,实现了从粗到精的立体匹配。利用BP神经网络构造了三维重建神经网络。利用立体匹配的结果,可以重建零件的三维形状。然后利用三维矩及其不变量构造三维零件的特征向量;神经网络分类器采用ART2神经网络,可以对三维零件进行识别和分类。在智能装配系统中对合成零件和实际机械零件进行了测试。结果表明,该方法是有效的,适用于智能装配系统。
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Machine vision for 3D mechanical part recognition in intelligent manufacturing environments
A 3D machine vision method used in intelligent manufacturing environments is presented. In this method, the neural network technology is used to provide effective methodologies for solving difficult computational problems in 3D recognition processes. The recognition processes can be divided into two parts. First, a 3D reconstruction. approach based on wavelet analysis is presented. The stereo matching problem is solved with a wavelet analysis. The dyadic discrete wavelet analysis is adopted in this process and a stereo matching process is realized with global optimization. A coherent hierarchical matching strategy is constructed, so that the stereo matching process can be accomplished with coarse to fine techniques. A 3D reconstruction neural network is constructed by using the BP neural network. With the results of stereo matching, the 3D shape of part can be reconstructed. Then the feature vectors of 3D parts are constructed by using the 3D moment and its invariant. An ART2 neural network is adopted for the neural network classifier, by which the 3D parts can be recognized and classified. The method was tested with both synthetic and real mechanical parts in intelligent assembly system. Results show that the method presented is effective and suitable for an intelligent assembly system.
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