Real Time Detection Algorithm for Escape Ladders based on YOLOv5s

Sheng Jin
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Abstract

In the detection of escape ladders in the context of smart construction sites, due to the relatively small target size of the escape ladder compared to the entire input image frame, significant environmental interference, and high missed detection and false detection rates, an improved YOLOv5s escape ladder real-time detection algorithm is proposed by combining the attention mechanism network. The model uses CSPLocknet53 as the backbone network for feature extraction, introduces the attention module CA, and integrates spatial and channel information, while increasing a small amount of computation, performance has been significantly improved. Optimize the network structure of YOLOv5s algorithm, strengthen shallow feature weights to enhance small target detection effectiveness, add attention mechanisms to increase the weight of small targets and their surrounding features, and use Mosaic methods for data augmentation to improve detection accuracy and recall. After multiple repeated experiments, these experimental results have proven that the optimized YOLOv5s algorithm for real-time detection of escape ladders has an average detection accuracy (accuracy, recall) of (81.8, 82.6). Compared with the traditional YOLOv5s algorithm, the accuracy and recall have been improved by 1.4% and 1.2%, respectively. The optimized YOLOv5s algorithm can effectively improve the detection accuracy of real-time detection of escape ladders, and improve the detection and resolution performance of small escape ladder targets.
基于 YOLOv5s 的逃生梯实时检测算法
在智慧工地背景下的逃生梯检测中,由于逃生梯的目标尺寸相对于整个输入图像帧较小,环境干扰明显,漏检率和误检率较高,结合注意力机制网络,提出了一种改进的YOLOv5s逃生梯实时检测算法。该模型以CSPLocknet53作为特征提取的骨干网络,引入注意力模块CA,整合空间信息和通道信息,在增加少量计算量的同时,性能得到显著提升。优化YOLOv5s算法的网络结构,加强浅层特征权重以提高小目标检测效果,增加注意力机制以提高小目标及其周围特征的权重,并使用Mosaic方法进行数据扩增以提高检测精度和召回率。经过多次重复实验,这些实验结果证明,优化后的逃生梯实时检测 YOLOv5s 算法的平均检测精度(准确率、召回率)为(81.8、82.6)。与传统的 YOLOv5s 算法相比,准确率和召回率分别提高了 1.4% 和 1.2%。优化后的 YOLOv5s 算法能有效提高逃生梯实时检测的检测精度,改善小型逃生梯目标的检测和解析性能。
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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