利用计算机视觉和自组织图聚类磨损粒子

M. A. C. Ramos, B. C. C. Leme, L. F. D. de Almeida, F. C. P. Bizarria, J. W. P. Bizarria
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引用次数: 1

摘要

这项工作提出了一种方法的实现,用于分类磨损颗粒污染物存在于工业油中使用图像处理和神经网络。该方法基于计算机视觉系统获得的形态数据,利用自组织图(Self-Organizing Maps)对不同磨屑组的颗粒特征进行分类。用于训练神经网络和进一步验证结果的数据集是使用磨损颗粒分析专业公司提供的报告收集的。目标是开发一种适用于大多数行业的系统,使颗粒分类过程更加自主和快速。结果表明,我们提出的系统可以可靠、自主地根据粒子的形状对其进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering wear particle using computer vision and self-organizing maps
This work presents the implementation of a method for classification of wear particle contaminant present in industrial oil by using image processing and neural networks. It is based on morphological data obtained from a computer vision system and employs Self-Organizing Maps to classify particles' features intro different wear debris groups. The dataset used for training the neural network and further validation of the results was gathered using reports provided by a specialist company in wear particle analysis. The objective is to develop a system feasible for most industries to turn the process of particle classification more autonomous and faster. The results demonstrate that our proposed system could classify particles considering their shape in a reliable and autonomous way.
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