煤炭工程 ›› 2024, Vol. 56 ›› Issue (6): 174-180.doi: 10. 11799/ ce202406027

• 研究探讨 • 上一篇    下一篇

复杂环境下煤矿井下胶带运输异物在线检测算法优化与分析#br#

高 敏,李 玲,张 辉,曹意宏,叶贵州   

  1. 1. 长沙理工大学 电气与信息工程学院,湖南 长沙 410004
    2. 晋能控股煤业集团 马脊梁矿,山西 大同 037027 3. 湖南大学 机器人学院,湖南 长沙 410082 4. 湖南大学 信息科学与工程学院,湖南 长沙 410082 5. 太原理工大学 矿业工程学院,山西 太原 030024
  • 收稿日期:2023-07-04 修回日期:2023-08-17 出版日期:2023-06-20 发布日期:2025-01-08
  • 通讯作者: 张辉 E-mail:zhanghuihby@126.com

Optimization and analysis of online detection algorithm for foreign matter transportation in coal mine underground belt transportation under complex environment

  • Received:2023-07-04 Revised:2023-08-17 Online:2023-06-20 Published:2025-01-08
  • Contact: hui -zhang E-mail:zhanghuihby@126.com

摘要:

为解决煤矿井下胶带异物检测受煤尘干扰、光线不均、胶带高速运动造成传统检测算法精度低等问题,文章基于YOLOv7对矿井胶带异物检测算法进行优化。首先,通过自适应对比度增强算法,强化胶带监控图像对比度,提高目标图像轮廓清晰度;其次,在主干提取网络中提出多尺度混合残差注意力机制,增强YOLOv7对异物特征提取能力与对背景干扰能力;最后,采用加权双向特征金字塔网络与4检测头输出模型预测结果,提升网络对不同尺寸异物检测效率。通过实验可得,改进后的YOLOv7模型对井下胶带异物识别精度和速度优于YOLOv5、YOLOv7,对井下胶带异物识别精度和识别速度分别为93.6%、26f/s。识别平均准确率相较于YOLOv5模型、YOLOv7模型分别提高了3.9%,3.1%;平均召回率分别提高了4.1%,3.4%;检测时间分别有0.009s,0.005s的提升。

关键词: 异物检测 , YOLOv7 , 注意力机制 , 小目标检测 , TensorRT

Abstract:

Coal mine belt conveyor is the main transportation tool of raw coal, and its normal operation is very important to the safe production of coal mine. In the process of belt transportation, the foreign matter such as large coal gangue bolt is the main cause of belt clamping and deviation tearing, which restricts the safe and efficient operation of belt conveyor.The key factors leading to the low accuracy of intelligent picking and detection of belt foreign objects are complex detection conditions such as the complex environment with high dust concentration and poor lighting in the mine, the fast speed of coal transport belts and the easy obstruction of foreign objects from each other The complex detection environment such as large coal dust underground, poor lighting, and fast coal transport belt speed are the key factors that lead to low detection accuracy of intelligent picking of foreign objects on the belt. Based on the actual monitoring data of an underground belt conveyor in a coal mine in Datong, Shanxi, this paper improves the YOLOv7 detection algorithm; firstly, through the adaptive contrast enhancement algorithm, the contrast of the belt monitoring image is enhanced, which is beneficial to improve the outline definition of the target image; secondly, in the trunk In the extraction network, a multi-scale mixed residual attention mechanism is proposed to enhance the ability of YOLOv7 to extract foreign object features and interfere with the background. At the same time, it introduces full-dimensional dynamic convolution to replace the ordinary convolution in the ELAN module, reducing the redundant data in the convolution. accumulation. Finally, a weighted bidirectional feature pyramid network and 4 detection heads are used to output model prediction results to improve the network's detection efficiency for foreign objects of different sizes. Compared with CPU GPU, TensorRt engine was used to convert the weight of the trained and improved YOLOv7 model and deploy it to the detection platform. Online detection was performed on the belt conveyor surveillance video with a resolution of 1920 1080 in coal mine to realize real-time monitoring of foreign bodies.Through experiments, the improved YOLOv7 model is superior to YOLOv5 and YOLOv7 in the recognition accuracy and speed of foreign objects in the downhole belt, and the recognition accuracy and speed of foreign objects in the downhole belt are 94.3% and 24fps, respectively. Compared with the YOLOv5 model and YOLOv7 model, the average recognition accuracy rate has increased by 4.6% and 3.8% respectively; the average recall rate has increased by 4.5% and 3.8% respectively; the detection time has been improved by 0.007s and 0.003s respectively.

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