YOLO-DCRCF: An Algorithm for Detecting the Wearing of Safety Helmets and Gloves in Power Grid Operation Environments.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Jinwei Zhao, Zhi Yang, Baogang Li, Yubo Zhao
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引用次数: 0

Abstract

Safety helmets and gloves are indispensable personal protective equipment in power grid operation environments. Traditional detection methods for safety helmets and gloves suffer from reduced accuracy due to factors such as dense personnel presence, varying lighting conditions, occlusions, and diverse postures. To enhance the detection performance of safety helmets and gloves in power grid operation environments, this paper proposes a novel algorithm, YOLO-DCRCF, based on YOLO11 for detecting the wearing of safety helmets and gloves in such settings. By integrating Deformable Convolutional Network version 2 (DCNv2), the algorithm enhances the network's capability to model geometric transformations. Additionally, a recalibration feature pyramid (RCF) network is innovatively designed to strengthen the interaction between shallow and deep features, enabling the network to capture multi-scale information of the target. Experimental results show that the proposed YOLO-DCRCF model achieved mAP50 scores of 92.7% on the Safety Helmet Wearing Dataset (SHWD) and 79.6% on the Safety Helmet and Gloves Wearing Dataset (SHAGWD), surpassing the baseline YOLOv11 model by 1.1% and 2.7%, respectively. These results meet the real-time safety monitoring requirements of power grid operation sites.

电网运行环境中安全帽手套佩戴情况检测算法YOLO-DCRCF。
安全帽和手套是电网运行环境中不可缺少的个人防护装备。由于人员密集、光照条件变化、遮挡和姿势不同等因素,传统的安全帽和手套检测方法的准确性降低。为了提高电网运行环境中安全帽手套的检测性能,本文提出了一种基于YOLO11的新型算法YOLO-DCRCF,用于检测电网运行环境中安全帽手套的佩戴情况。通过集成可变形卷积网络版本2 (DCNv2),该算法增强了网络对几何变换的建模能力。此外,创新设计了一种再标定特征金字塔(RCF)网络,加强了浅层和深层特征之间的相互作用,使网络能够捕获目标的多尺度信息。实验结果表明,提出的YOLO-DCRCF模型在安全帽佩戴数据集(SHWD)和安全帽手套佩戴数据集(SHAGWD)上的mAP50得分分别为92.7%和79.6%,分别比基线YOLOv11模型高1.1%和2.7%。这些结果满足了电网运行现场实时安全监测的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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