基于改进Hyper−YOLO的煤矿输送带异物检测方法

A detection method for foreign objects on coal mine conveyor belts based on an improved Hyper-YOLO

  • 摘要: 基于YOLO系列的输送带异物检测技术已取得丰富的研究成果,但其颈部网络无法使相隔较远的特征层直接交换特征信息,引发小目标漏检、重复检测等问题。Hyper−YOLO可在颈部网络实现特征层之间跨层、跨位置的高阶关联,但会增加计算量,且降低对高频特征信息的敏感性,导致在噪声较为敏感的区域特征提取能力下降,预测边界框发生偏移。针对上述问题,提出一种基于改进Hyper−YOLO的煤矿输送带异物检测方法。在图像预处理阶段采用动态对比度受限自适应直方图均衡化(Dy−CLAHE)方法,将Laplacian算子引入对比度受限自适应直方图均衡化(CLAHE)框架,建立噪声水平与对比度限制阈值之间的动态映射关系,有效解决了粉尘环境下图像细节丢失和噪声放大的问题;对Hyper−YOLO进行改进,采用高效交并比(EIoU)损失函数优化边界框回归过程,提升了预测边界框定位精度,并在混合聚合网络(MANet)的深层和浅层嵌入高效通道注意力机制(ECA)模块,通过局部跨通道交互动态调整通道权重,有效平衡对高频和低频特征信息的敏感性,降低小目标异物的漏检率,同时通过简化快速空间金字塔池化(SimSPPF)模块,减少了冗余计算,在保证精度的同时提升了推理速度。实验结果表明:改进Hyper−YOLO在准确率和mAP@0.5指标上分别为94.2%和93.4%,相较于Hyper−YOLO提高了5.0%和3.5%,参数量为3.26×106个,召回率为87.7%,检测速度为158帧/s,满足煤矿井下异物实时检测的需求;在不同煤矿输送带异物检测场景下无漏检及重复检测情况,预测边界框更贴合异物。

     

    Abstract: Detection technologies for foreign objects on conveyor belts based on the YOLO series have produced fruitful research results. However, the neck network cannot enable direct feature exchange between distant feature layers, leading to problems such as missed detections and duplicate detections of small targets. Hyper-YOLO achieves high-order correlations in the neck network across layers and positions among feature layers, but it increases computational load and reduces sensitivity to high-frequency feature information, resulting in degraded feature extraction in noise-sensitive areas and shifted predicted bounding boxes. To address these issues, this study proposed a method for detecting foreign objects on coal mine conveyor belts based on an improved Hyper-YOLO. In the image preprocessing stage, the Dynamic Contrast Limited Adaptive Histogram Equalization (Dy-CLAHE) method was adopted, which introduced the Laplacian operator into the Contrast Limited Adaptive Histogram Equalization (CLAHE) framework to establish a dynamic mapping between noise level and contrast limited threshold. This effectively solved the problems of image detail loss and noise amplification in dusty environments. Hyper-YOLO was improved by using the Efficient Intersection over Union (EIoU) loss function to optimize the bounding box regression process, and enhanced localization accuracy. In the Mixed Aggregation Network (MANet), the Efficient Channel Attention (ECA) module was embedded into both deep and shallow layers to dynamically adjust channel weights through local cross-channel interaction, effectively balancing sensitivity to high- and low-frequency features and reducing the missed detection rate of small foreign objects. Meanwhile, the Simplified Spatial Pyramid Pooling-Fast (SimSPPF) module was used to reduce redundant computation, thereby improving inference speed without sacrificing accuracy. Experimental results showed that the improved Hyper-YOLO achieved an accuracy of 94.2% and a mAP@0.5 of 93.4%, representing improvements of 5.0% and 3.5%, respectively, compared to Hyper-YOLO. The number of parameters was 3.26×106, recall was 87.7%, and detection speed was 158 FPS, which met the real-time detection requirements for underground coal mine foreign objects. In various detection scenarios, there were no missed or duplicate detections, and the predicted bounding boxes were better aligned with the foreign objects.

     

/

返回文章
返回