A Faster R-CNN Implementation of Presence Inspection for Parts on Industrial Produce

Dighvijay G, Devashish S Vaishnav, Rajasekar Mohan
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引用次数: 1

Abstract

Presence inspection has been conducted as a matter of course during acceptance/shipment and on production lines. Due to increased factory automation (FA) in recent years, vision systems and image processing technologies have been actively introduced. This paper describes the advantages of using image processing for presence inspection, and the basic principles and practical applications of presence inspection using image processing. This paper demonstrates the use of Faster R-CNN, TensorFlow object detection API, and Computer Vision for the detection of the presence or absence of an industrial part. This solution would present itself as a cost-effective method for the quality assessment phase of a production line in a factory.
一种更快的R-CNN实现工业产品零件的存在性检测
在验收/装运和生产线上进行存在检查是理所当然的。近年来,由于工厂自动化程度的提高,视觉系统和图像处理技术被积极引入。介绍了利用图像处理技术进行现场检测的优点,以及利用图像处理技术进行现场检测的基本原理和实际应用。本文演示了使用Faster R-CNN、TensorFlow对象检测API和计算机视觉来检测工业部件的存在与否。该解决方案将作为工厂生产线质量评估阶段的一种经济有效的方法。
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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