Digital Image Processing for Detecting Industrial Machine Work Failure with Quantization Vector Learning Method

M. Rasyid, Z. Tahir, Nfn Syafaruddin
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引用次数: 1

Abstract

Todays, digital image processing is widely used in various fields to facilitate humans in doing work by analyzing videos or images for use in decision making in the industrial world. The use of industrial machine technology is one of the most important factors in efforts to facilitate human work, but an industrial machine is inseparable from work failure that can hinder the production process and cause harm to the industry. This study aims to detect a failure in industrial machinery by using video data of industrial machine movements recorded using a webcam camera. For the preprocessing stage, the image is resized then converted to grayscale imagery and segmented using the thresholding method, then morphological operations are performed with an opening operation, feature extraction is done by changing the binary image into a vector data that is used as input data in the classification process using the Learning Vector Quantization Neural Network Algorithm (LVQ NN) version 1. The results showed the results of the detection of machine working errors can be done well with an accuracy value of 94.24% in training and 92.38% in the testing phase.
基于量化向量学习方法的工业机器工作故障检测数字图像处理
如今,数字图像处理被广泛应用于各个领域,通过分析视频或图像来方便人类工作,用于工业世界的决策。工业机器技术的使用是努力方便人类工作的最重要因素之一,但是工业机器离不开能够阻碍生产过程并对工业造成危害的工作故障。本研究的目的是通过使用网络摄像头记录的工业机器运动的视频数据来检测工业机械的故障。在预处理阶段,首先调整图像大小,然后将图像转换为灰度图像并使用阈值分割方法进行分割,然后使用开放操作进行形态学操作,通过将二值图像转换为矢量数据进行特征提取,使用学习矢量量化神经网络算法(LVQ NN)版本1作为分类过程中的输入数据。结果表明,该方法能较好地完成机器工作误差的检测,训练阶段的准确率为94.24%,测试阶段的准确率为92.38%。
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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