基于YOLOv5的矿石粒度分布检测方法

Niu Niu, Yongming Wang, Libin Tan
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引用次数: 0

摘要

传统的矿石粒度检测算法主要是基于机器视觉的矿石图像分割算法,在精度和实时性上都不能满足行业的要求。为此,本文提出了一种基于YOLOv5的深度学习网络模型,用于实时检测矿石粒度。通过YOLOv5网络模型输出矿石边界框的位置及其宽度和高度信息,提取矿石的FERET粒度。最终粒度分布检测结果与实际粒度分布的累积错误率小于3%,性能良好。
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Detection Method of Ore Particle Size Distribution Based on YOLOv5
Traditional ore size detection algorithms are mainly machine vision-based ore image segmentation algorithms, which cannot meet the requirements of the industry in terms of accuracy and real-time. Therefore, this paper proposed a deep learning network model based on YOLOv5 for real-time detection of ore particle size. The location of the ore bounding box and its width and height information were output from the YOLOv5 network model, and then the FERET particle size of the ore was extracted. The cumulative error rate between the final particle size distribution detection results and the actual distribution was less than 3%, and the performance was good.
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