Robotic cans surface inspection system based on shape features

Ehsan Ahanchian, S. M. S. Ahmad, M. Hanafi
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引用次数: 1

Abstract

Computer vision systems are one of the most widely used techniques in Automation and have been extensively used for industry automation. Industrial automation deals mainly with the automation of production, quality control and materials management processes. One trend is the increasing use of Machine vision to offer automatic inspection and robot guidance functions, while the other is a continued increase in the use of robots. The aim of this paper is to provide a robotic cans surface inspection system based on the shape. The proposed system is simple and user friendly yet accurate, uses Hu moment as a feature of detected shape in the image and compared to the range of acceptable Hu moment gained from training. It is composed of a camera attached to a PC with TCP/IP, image acquisition, analysis, and inspection implemented by Open CV Library for image processing. The method described in this paper checks on the statistical-based approaches for feature extraction such as moment feature as part of the final inspection system. Robotic arm is programed as a client server method to receive action and position from the PC, which carries out the image processing as well.
基于形状特征的机器人罐面检测系统
计算机视觉系统是自动化领域应用最广泛的技术之一,在工业自动化中得到了广泛的应用。工业自动化主要涉及生产、质量控制和物料管理过程的自动化。一个趋势是越来越多地使用机器视觉来提供自动检测和机器人引导功能,而另一个趋势是机器人的使用持续增加。本文的目的是提供一个基于形状的机器人罐头表面检测系统。该系统使用胡氏矩作为图像中检测形状的特征,并与训练得到的可接受胡氏矩范围进行比较,具有简单、友好和准确的特点。它是由一台摄像机连接到一台带有TCP/IP的PC机,通过Open CV Library实现图像采集、分析和检测,进行图像处理。本文所描述的方法检查了基于统计的特征提取方法,如力矩特征作为最终检测系统的一部分。将机械臂编程为客户端服务器方式,接收来自PC机的动作和位置,并进行图像处理。
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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