基于改进的 YOLOv3,识别当地 Suralaya PGU 2 号地面单元操作员的安全帽佩戴情况

Firlan Maulana Ruaz
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引用次数: 0

摘要

PT.PLN Indonesia Power Suralaya 发电站要求当地底层的操作人员佩戴安全帽,以防止在执行任务时头部受伤。公司必须确保观察工人佩戴安全帽的情况,以防止操作人员头部受伤。PT PLN 印尼电力公司的 K3 文化转型计划带来了一种新的观察方法,即通过实时检测来发现当地基层操作员佩戴安全帽的情况。YOLOv3 是一种应用程序,可用于在 YOLOv1 和 YOLOv2 的基础上,通过使用已收集的数据图像,使用暗网 53 算法实时检测工人的安全帽佩戴情况。在 YOLOv3 模型的基础上,提出了 YOLOv3 的改进版本,通过结合多尺度检测训练,提高安全帽佩戴检测的准确性和速度。不同版本的 YOLOv3 将用于比较头盔识别的结果。与其他版本的 YOLO 相比,改进后的 YOLOv3 在头盔安全检测方面的 mAP50 为 96.63%,检测时间为 725 711 毫秒。实验结果表明,改进后的 YOLOv3 对 PT PLN Indonesia Power Suralaya 发电站操作员佩戴安全帽的检测速度和准确性都很满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Safety Helmet Wearing Of Operator Local Ground Floor Unit 2 Suralaya PGU Based On Improved YOLOv3
PT. PLN Indonesia Power Suralaya Power Generation Unit requires its operators on the local ground floor to wear safety helmets to prevent head injuries while performing their tasks. Observation of workers wearing safety helmet must be ensured by the company to prevent head injury by operators. The Culture Transformation Program of K3 PT PLN Indonesia Power brings a new observation method to detect safety helmet wearing of operator local ground floor using real-time detection. YOLOv3 is an application which can be used to real-time detection helmet wearing of workers using the darknet53 algorithm based on YOLOv1 and YOLOv2 by using data images that have been collected. Based on YOLOv3 model, the improved version of YOLOv3 is proposed to improve accuracy and speed detection of safety helmet wearing by combining multi-scale detection training. Different YOLOv3 versions will be used to compare results of helmet recognition. The improved YOLOv3 show results 96.63% mAP50 and 725,711 milliseconds better than the other versions of YOLO to detect helmet safety. The experimental result show that the improved YOLOv3 have satisfying with the detection speed and accuracy of safety helmet wearing detection by operators at PT PLN Indonesia Power Suralaya Power Generation Unit.
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