Information Science and Engineering School, Northeastern University, Shenyang, 110004, China.
Liaoning Key Laboratory of Intelligent Diagnosis and Safety for Metallurgical Industry, Northeastern University, Shenyang, 110819, China.
Sci Rep. 2023 Jun 1;13(1):8881. doi: 10.1038/s41598-023-35962-3.
In the process of mining belt transportation, various foreign objects may appear, which will have a great impact on the crusher and belt, thus affecting production progress and causing serious safety accidents. Therefore, it is important to detect foreign objects in the early stages of intrusion in mining belt conveyor systems. To solve this problem, the YOLOv4_GECA method is proposed in this paper. Firstly, the GECA attention module is added to establish the YOLOv4_GECA foreign object detection model in the mineral belt to enhance the foreign object feature extraction capability. Secondly, based on this model, the learning rate decay of restart cosine annealing is used to improve the foreign object image detection performance of the model. Finally, we collected belt transport image information from the Pai Shan Lou gold mine site in Shenyang and established a belt foreign body detection dataset. The experimental results show that the average detection accuracy of the YOLOv4_GECA method proposed in this paper is 90.1%, the recall rate is 90.7%, and the average detection time is 30 ms, which meets the requirements for detection accuracy and real-time performance at the mine belt transportation site.
在带式输送机电矿开采过程中,可能会出现各种异物,这将对破碎机和皮带造成很大的影响,从而影响生产进度并引发严重的安全事故。因此,在采矿带式输送机系统中,早期检测侵入的异物是很重要的。为了解决这个问题,本文提出了 YOLOv4_GECA 方法。首先,在 YOLOv4 中加入 GECA 注意力模块,建立矿物带 YOLOv4_GECA 异物检测模型,增强异物特征提取能力。其次,基于该模型,使用重启余弦退火的学习率衰减来提高模型对异物图像的检测性能。最后,我们从沈阳排山楼金矿现场采集带式输送图像信息,建立了带式异物检测数据集。实验结果表明,本文提出的 YOLOv4_GECA 方法的平均检测准确率为 90.1%,召回率为 90.7%,平均检测时间为 30ms,满足了矿用带式输送现场的检测精度和实时性要求。