基于深度学习的煤矸石分拣

Panliang Yang, Bin Zhu, Lianquan Ji, Peng Nie
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引用次数: 0

摘要

煤矸石分选是煤炭开采和加工过程中的重要环节,可有效降低煤炭后处理的难度和成本。针对煤矸石分选过程复杂、分选效率低等问题,提出了一种基于深度学习的煤矸石分选方法。该方法基于 YOLO v7 深度学习算法,通过创建煤矸石数据集和训练检测模型,实现了煤矸石的实时检测。通过构建煤矸石分拣平台,实现了对目标煤矸石的捕捉。实验结果表明,YOLO v7 模型的 mAP 为 96.70%,检测速度为 69fps,与 YOLO v5、SSD 和 Faster RCNN 算法相比具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coal gangue sorting based on deep learning
Coal gangue sorting is an important link in the process of coal mining and processing, which can effectively reduce the difficulty and cost of coal post-processing. Aiming at the problems of complicated sorting process and low sorting efficiency of coal gangue, a coal gangue sorting method based on deep learning was proposed. The method is based on the YOLO v7 deep learning algorithm, and it achieves real-time detection of coal gangue by creating a coal gangue dataset and training the detection model. By constructing a coal gangue sorting platform, the capture of target gangue has been achieved. The experimental results show that the mAP of YOLO v7 model is 96.70%, and the detection speed is 69fps, which has significant advantages compared to YOLO v5, SSD and Faster RCNN algorithms.
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