磨损颗粒领域的计算机视觉

M. Laghari, F. Ahmed
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引用次数: 2

摘要

本文介绍了一种利用计算机视觉和图像处理技术监测机器磨损过程的系统,该系统应用于磨损颗粒分析。粒子利用其视觉属性进行分类,以预测发动机和其他机械的磨损失效模式。当前工作的目的是开发一种自动化系统,对磨损颗粒进行分类,从而预测发动机和其他机械的磨损失效模式,从而消除对专家的需求和对人类视觉检测技术的依赖。本文介绍了交互式控制系统CAVE (Computer Aided Vision Engineering,计算机辅助视觉工程)从显微图像中获取磨损颗粒形态特征及其自动分类所涉及的数据处理阶段。
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Computer Vision in the Field of Wear Particles
This paper presents a system to monitor the wear process in machines using computer vision and image processing techniques applied to wear particle analysis. Particles are classified using their visual attributes to predict wear failure modes in engines and other machinery. The aim of the current work is to develop an automated system to classify wear particles and thereby predict wear failure modes in engines and other machinery, such that it obviates the need for specialists and reliance on human visual inspection techniques. The paper describes an interactive control system CAVE (Computer Aided Vision Engineering) in terms of the stages involved in processing data to acquire morphological features of wear particles from microscopic images and their automatic classification.
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