A real-time and accurate detection approach for bucket teeth falling off based on improved YOLOX

IF 1 4区 工程技术 Q4 ENGINEERING, MECHANICAL
Jinnan Lu, Yang Liu
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引用次数: 0

Abstract

Abstract. An electric shovel is a bucket-equipped mining excavator widely used in open-pit mining today. The prolonged direct impact between the bucket teeth and the ore during the mining process will cause the teeth to loosen prematurely or even break, resulting in unplanned downtime and productivity losses. To solve this problem, we propose a real-time and accurate detection algorithm of bucket teeth falling off based on improved YOLOX. Firstly, to solve the problem of poor detection effect caused by uneven illumination, the dilated convolution attention mechanism is added to enhance the feature expression ability of the target in complex backgrounds so as to improve the detection accuracy of the target. Secondly, considering the high computing cost and large delay of the embedded device, the deep separable convolution is used to replace the traditional convolution in the feature pyramid network, and the model compression strategy is used to prune the redundant channels in the network, reduce the model volume, and improve the detection speed. The performance test is carried out on the self-constructed dataset of WK-10 electric shovel. The experimental results show that, compared with the YOLOX model, the mean average precision of the algorithm in this paper reaches 95.26 %, only 0.33 % lower, while the detection speed is 50.8 fps, 11.9 fps higher, and the model volume is 28.42 MB, which is reduced to 29.46 % of the original. Compared with many other existing methods, the target detection algorithm proposed in this paper has the advantages of higher precision, smaller model volume, and faster speed. It can meet the requirements of real-time and accurate detection of the bucket teeth falling off.
基于改进YOLOX的斗齿脱落实时准确检测方法
摘要电铲是一种配备铲斗的采矿挖掘机,目前广泛用于露天采矿。在采矿过程中,铲斗齿与矿石之间的长期直接碰撞会导致齿过早松动甚至断裂,导致计划外停机和生产力损失。为了解决这个问题,我们提出了一种基于改进YOLOX的桶齿脱落实时准确检测算法。首先,为了解决光照不均匀导致检测效果差的问题,增加了扩张卷积注意力机制,增强了目标在复杂背景下的特征表达能力,从而提高了目标的检测精度。其次,考虑到嵌入式设备的高计算成本和大延迟,在特征金字塔网络中,采用深度可分离卷积来代替传统卷积,并采用模型压缩策略来修剪网络中的冗余信道,减少模型体积,提高检测速度。在自行构建的WK-10电铲数据集上进行了性能测试。实验结果表明,与YOLOX模型相比,本文算法的平均精度达到95.26 %, 仅0.33 % 更低,而检测速度为50.8 每秒11.9帧 fps更高,模型音量为28.42 MB,减少到29.46 % 原件。与现有的许多方法相比,本文提出的目标检测算法具有精度高、模型体积小、速度快的优点。它可以满足实时、准确检测扣齿脱落的要求。
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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来源期刊
Mechanical Sciences
Mechanical Sciences ENGINEERING, MECHANICAL-
CiteScore
2.20
自引率
7.10%
发文量
74
审稿时长
29 weeks
期刊介绍: The journal Mechanical Sciences (MS) is an international forum for the dissemination of original contributions in the field of theoretical and applied mechanics. Its main ambition is to provide a platform for young researchers to build up a portfolio of high-quality peer-reviewed journal articles. To this end we employ an open-access publication model with moderate page charges, aiming for fast publication and great citation opportunities. A large board of reputable editors makes this possible. The journal will also publish special issues dealing with the current state of the art and future research directions in mechanical sciences. While in-depth research articles are preferred, review articles and short communications will also be considered. We intend and believe to provide a means of publication which complements established journals in the field.
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