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Automatic recognition and classifier of online parts based on machine vision

机译:基于机器视觉的在线零件的自动识别和分类

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In order to call correct NC program automatically, real-time for corresponding online parts in the flexible manufacturing system (FMS), a new automatic recognition and classifier system based on machine vision was developed. In the image pre-processing, to make the extraction of image edge-detection better, a new re-filter, consisting of three steps-Gauss linear smoothness filter, sharpening, Median Filter, was first introduced. Then, Canny edge detection algorithm was adopted. Moreover, comparing with the most existing classification methods, such as Nearest Neighbor, Bayesian, Off-Line computations and so on, a new classification algorithm, Two Steps Shape Classification, was proposed. Using a Radial Feature Token (RFT), which functions as the ALISA Shape Module in the Adaptive Learning Image and Signal Analysis (ALISA) system hierarchy. Experimental results confirm that the image processing algorithm is effective and useful for real-timely recognizing and classifying online parts in the FMS.
机译:为了自动调用正确的NC程序,柔性制造系统(FMS)中的相应在线部件的实时,开发了一种基于机器视觉的新型自动识别和分类系统。在图像预处理中,为了提取图像边缘检测更好,首先介绍了由三个步骤高声线性光滑度过滤器,锐化,中值滤波器组成的新重新过滤器。然后,采用了Canny Edge检测算法。此外,与最现有的分类方法(如最近的邻居,贝叶斯,离线计算等)进行了比较,提出了一种新的分类算法,两个步骤形状分类。使用径向特征令牌(RFT),其在自适应学习图像和信号分析(ALISA)系统层次结构中起作用作为Alisa形状模块。实验结果证实,图像处理算法有效,可用于实时识别和分类FMS中的在线部件。

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