A Foreign Object Detection Method for Belt Conveyors Based on an Improved YOLOX Model

Rongbin Yao, Peng Qi, Dezheng Hua, Xu Zhang, He Lu, Xinhua Liu
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引用次数: 1

Abstract

As one of the main pieces of equipment in coal transportation, the belt conveyor with its detection system is an important area of research for the development of intelligent mines. Occurrences of non-coal foreign objects making contact with belts are common in complex production environments and with improper human operation. In order to avoid major safety accidents caused by scratches, deviation, and the breakage of belts, a foreign object detection method is proposed for belt conveyors in this work. Firstly, a foreign object image dataset is collected and established, and an IAT image enhancement module and an attention mechanism for CBAM are introduced to enhance the image data sample. Moreover, to predict the angle information of foreign objects with large aspect ratios, a rotating decoupling head is designed and a MO-YOLOX network structure is constructed. Some experiments are carried out with the belt conveyor in the mine’s intelligent mining equipment laboratory, and different foreign objects are analyzed. The experimental results show that the accuracy, recall, and mAP50 of the proposed rotating frame foreign object detection method reach 93.87%, 93.69%, and 93.68%, respectively, and the average inference time for foreign object detection is 25 ms.
基于改进YOLOX模型的带式输送机异物检测方法
带式输送机作为煤炭运输的主要设备之一,其检测系统是智能矿山发展的一个重要研究领域。在复杂的生产环境和人为操作不当的情况下,非煤类异物与传送带接触是很常见的。为避免皮带划伤、偏离、断裂等造成重大安全事故,本工作提出了一种针对带式输送机的异物检测方法。首先,采集并建立了外物图像数据集,引入IAT图像增强模块和CBAM关注机制对图像数据样本进行增强;此外,为了预测大长宽比外物体的角度信息,设计了旋转解耦头,构建了MO-YOLOX网络结构。利用该带式输送机在矿山智能采矿设备实验室进行了一些实验,并对不同的异物进行了分析。实验结果表明,所提出的旋转框架异物检测方法的准确率、召回率和mAP50分别达到93.87%、93.69%和93.68%,异物检测的平均推理时间为25 ms。
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