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一种基于深度学习的个人防护装备检测算法。

A deep learning-based algorithm for the detection of personal protective equipment.

作者信息

Tong Bo, Li Guan, Bu Xiangli, Wang Yang, Yu Xingchen

机构信息

School of Electronic Information and Control, North China Institute of Science and Technology, Langfang City, China.

Key Laboratory of Brain-Computer Interface Technology Application of the Ministry of Emergency Management, Beijing, China.

出版信息

PLoS One. 2025 May 29;20(5):e0322115. doi: 10.1371/journal.pone.0322115. eCollection 2025.

Abstract

Personal protective equipment (PPE) is critical for ensuring the safety of construction workers. However, site surveillance images from construction sites often feature multi-size and multi-scale targets, leading to low detection accuracy for PPE in existing models. To address this issue, this paper proposes an improved model based on YOLOv8n.By enriching feature diversity and enhancing the model's adaptability to geometric transformations, the detection accuracy is improved.A Multi-Scale Group Convolution Module (MSGP) was designed to extract multi-level features using different convolution kernels. A Multi-Scale Feature Diffusion Pyramid Network (MFDPN) was developed, which aggregates multi-scale features through the Multiscale Feature Focus (MFF) module and diffuses them across scales, providing each scale with detailed contextual information. A customized Task Alignment Module was introduced to integrate interactive features, optimizing both classification and localization tasks. The DCNV2(Deformable Convolutional Networks v2) module was incorporated to handle geometric scale transformations by generating spatial offsets and feature masks from interactive features, thereby improving localization accuracy and dynamically selecting weights to enhance classification precision.The improved model incorporates rich multi-level and multi-scale features, allowing it to better adapt to tasks involving geometric transformations and aligning with the image data distribution in construction scenarios. Additionally, structured pruning techniques were applied to the model at varying levels, further reducing computational and parameter loads. Experimental results indicate that at a pruning level of 1.5, mAP@0.5 and mAP@0.5:0.95 improved by 3.9% and 4.6%, respectively, while computational load decreased by 21% and parameter count dropped by 53%. The proposed MFD-YOLO(1.5) model achieves significant progress in detecting personal protective equipment on construction sites, with a substantial reduction in parameter count, making it suitable for deployment on resource-constrained edge devices.

摘要

个人防护装备(PPE)对于确保建筑工人的安全至关重要。然而,建筑工地的现场监控图像通常具有多尺寸和多尺度目标,导致现有模型中PPE的检测精度较低。为了解决这个问题,本文提出了一种基于YOLOv8n的改进模型。通过丰富特征多样性和增强模型对几何变换的适应性,提高了检测精度。设计了一个多尺度组卷积模块(MSGP),使用不同的卷积核提取多级特征。开发了一个多尺度特征扩散金字塔网络(MFDPN),它通过多尺度特征聚焦(MFF)模块聚合多尺度特征并在不同尺度间扩散,为每个尺度提供详细的上下文信息。引入了一个定制的任务对齐模块来整合交互特征,优化分类和定位任务。并入了DCNV2(可变形卷积网络v2)模块,通过从交互特征生成空间偏移和特征掩码来处理几何尺度变换,从而提高定位精度并动态选择权重以提高分类精度。改进后的模型包含丰富的多级和多尺度特征,使其能够更好地适应涉及几何变换的任务,并与建筑场景中的图像数据分布相匹配。此外,在不同层次对模型应用了结构化剪枝技术,进一步减少了计算和参数负载。实验结果表明,在剪枝率为1.5时,mAP@0.5mAP@0.5:0.95分别提高了3.9%和4.6%,而计算负载降低了21%,参数数量减少了53%。所提出的MFD - YOLO(1.5)模型在建筑工地个人防护装备检测方面取得了显著进展,参数数量大幅减少,适用于在资源受限的边缘设备上部署。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b343/12121810/4a5c55d9cd2d/pone.0322115.g001.jpg

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