A Multi-sensor Fusion Algorithm for Monitoring the Health Condition of Conveyor Belt in Process Industry

Qiang Huang, Changchun Pan, Haichun Liu
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引用次数: 2

Abstract

Conveyor belts are some key equipments for transmission in the process industry. Belt wear is inevitable in the process of conveying. In order to evaluate the state of the belt, the inspection workers regularly check the belt. However, it can’t be tested comprehensively. Also, a lot of labor costs occur. In this paper, we propose a multi-sensor fusion method for the detection of conveyor belt surface damage, and builds a data acquisition system combining camera and lidar to obtain image data and point cloud data on the conveyor belt surface. On the basis of using traditional machine vision algorithms to detect surface damages, combined with the depth information obtained from the lidar points cloud, the fusion detection of the damage detection of two kinds of sensors is realized. Experiments show that the use of multi-sensor detection can effectively reduce misdetection caused by vision and improve the reliability of detection.
过程工业输送带健康状态监测的多传感器融合算法
输送带是过程工业中重要的传动设备。输送带在输送过程中磨损是不可避免的。为了评估皮带的状态,检查工人定期检查皮带。然而,它不能被全面测试。此外,还会产生大量的劳动力成本。本文提出了一种用于输送带表面损伤检测的多传感器融合方法,并构建了一个结合摄像头和激光雷达的数据采集系统,获取输送带表面的图像数据和点云数据。在利用传统机器视觉算法检测表面损伤的基础上,结合激光雷达点云获取的深度信息,实现了两种传感器损伤检测的融合检测。实验表明,采用多传感器检测可以有效减少视觉导致的误检,提高检测的可靠性。
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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