Research on Gangue Detection Algorithm Based on Cross-Scale Feature Fusion and Dynamic Pruning

Algorithms Pub Date : 2024-02-13 DOI:10.3390/a17020079
Haojie Wang, Pingqing Fan, Xipei Ma, Yansong Wang
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Abstract

The intelligent identification of coal gangue on industrial conveyor belts is a crucial technology for the precise sorting of coal gangue. To address the issues in coal gangue detection algorithms, such as high false negative rates, complex network structures, and substantial model weights, an optimized coal gangue detection algorithm based on YOLOv5s is proposed. In the backbone network, a feature refinement module is employed for feature extraction, enhancing the capability to extract features for coal and gangue. The improved BIFPN structure is employed as the feature pyramid, augmenting the model’s capability for cross-scale feature fusion. In the prediction layer, the ESIOU is utilized as the bounding box regression loss function to rectify the misalignment issue between predicted and actual box angles. This approach expedites the convergence speed of the network while concurrently enhancing the accuracy of coal gangue detection. Channel pruning is implemented on the network to diminish model computational complexity and weight, consequently augmenting detection speed. The experimental results demonstrate that the refined YOLOv5s coal gangue detection algorithm outperforms the original YOLOv5s algorithm, achieving a notable accuracy enhancement of 2.2% to reach 93.8%. Concurrently, a substantial reduction in model weight by 38.8% is observed, resulting in a notable 56.2% increase in inference speed. These advancements meet the detection requirements for scenarios involving mixed coal gangue.
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基于跨尺度特征融合和动态剪枝的煤矸石检测算法研究
工业传送带上煤矸石的智能识别是煤矸石精确分拣的关键技术。针对煤矸石检测算法中存在的假阴性率高、网络结构复杂、模型权重大等问题,提出了一种基于 YOLOv5s 的优化煤矸石检测算法。在骨干网络中,采用特征提取细化模块进行特征提取,增强了煤和煤矸石特征提取能力。改进后的 BIFPN 结构被用作特征金字塔,增强了模型的跨尺度特征融合能力。在预测层,利用 ESIOU 作为边界框回归损失函数,以纠正预测和实际框角之间的错位问题。这种方法加快了网络的收敛速度,同时提高了煤矸石检测的准确性。对网络进行了通道剪枝,以降低模型的计算复杂度和权重,从而提高检测速度。实验结果表明,改进后的 YOLOv5s 煤矸石检测算法优于原始 YOLOv5s 算法,准确率显著提高了 2.2%,达到 93.8%。同时,模型权重大幅降低了 38.8%,推理速度显著提高了 56.2%。这些进步满足了涉及混合煤矸石场景的检测要求。
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