Real-Time Automated Socket Inspection using Advanced Computer Vision and Machine Learning : DI: Defect Inspection and Reduction

C. Edwards, Aditya Kumar, Alex Vaske, Nathan McDaniel, Dipali Pradhan, Debashis Panda
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引用次数: 1

Abstract

Our test tools pick and place units into sockets for electrical testing. Defects or loose debris accumulated inside the test sockets will likely damage each subsequent unit being tested until the issue is detected and the defective socket is repaired or replaced. To resolve this critical issue, we equipped each pick-and-place arm with a new machine vision system designed to fit inside the existing tool. The limited footprint constraints required a highly compact imaging system which resulted in a variety of image artifacts, creating several unique challenges for the inspection system. We developed an inspection algorithm that utilizes a variety of advanced computer vision and machine learning techniques to normalize and match the images, remove artifacts, and detect defects. The flagged socket images can be manually dispositioned by the user and the socket can be sent for repair or cleaning as needed.
使用先进计算机视觉和机器学习的实时自动插座检测:DI:缺陷检测和减少
我们的测试工具挑选和放置单元插座进行电气测试。测试插座内堆积的缺陷或松散碎片可能会损坏每个后续测试单元,直到发现问题并修复或更换有缺陷的插座。为了解决这个关键问题,我们为每个拾取臂配备了一个新的机器视觉系统,以适应现有的工具。由于占地面积有限,需要高度紧凑的成像系统,这导致了各种图像伪影,给检测系统带来了一些独特的挑战。我们开发了一种检测算法,该算法利用各种先进的计算机视觉和机器学习技术来规范化和匹配图像,去除伪影并检测缺陷。标记的套接字图像可以由用户手动定位,并且可以根据需要发送套接字进行修复或清洗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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