机械零件缺陷识别的机器学习方法

Deepa Abin, M. Solanki, Neha Waghchaure, Snehal Shivthare, Rosilin Augustine
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引用次数: 1

摘要

影响金属质量的主要因素是金属表面存在的各种缺陷。识别这些缺陷并采取补救措施来克服缺陷对保持质量至关重要。手工检查缺陷是一个乏味的过程,有时可能不准确。本文的目的是研究各种分类技术及其在识别金属表面锈蚀方面的性能。采用自动颜色相关图对图像进行特征提取。我们评估了13种不同的分类技术的性能,并根据它们的准确率和错误率对它们进行了比较。Bagging、LogitBoost等分类技术和Random Forest等集成方法的准确率在95% - 97%之间,而J48的错误率最低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning approach for Defect Identification in Machinery parts
The prominent factor affecting the quality of metals are the various kind of defects present on their surfaces. Identifying these defects and taking remedial measures to overcome the defects is of paramount importance to maintain quality. Manual inspection of defects is a tedious process and may sometimes be inaccurate. The objective of this paper is to study various classification techniques and their performance in identifying rust from the metal surfaces. Auto color correlogram has been used on the images for feature extraction. We have evaluated the performance of 13 different classification techniques and they have been compared on the basis of their accuracy and error rates. Accuracy in the range of 95% - 97% was obtained by classification techniques like Bagging, LogitBoost and ensemble method such as Random Forest, whereas J48 gave the least error rate.
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