基于改进YOLOv5的高效森林火灾目标检测模型

IF 3 3区 农林科学 Q2 ECOLOGY
Long Zhang, Jiaming Li, Fuquan Zhang
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引用次数: 0

摘要

为了解决因森林火灾目标规模较小而导致的远程探测场景中的漏检问题,已采取措施提高为森林火灾图像设计的模型的特征提取和探测精度。在本研究中,通过修改YouOnly Look Once版本5(YOLOv5)的骨干网络,提出了两种算法DenseM-YOLOOv5和SimAM-YOLOv5。从轻量化模型的角度来看,与YOLOv5相比,SimAM-YOLOv5将参数大小减少了28.57%。此外,尽管SimAM-YOLOv5的召回率略有下降,但它在精度和平均精度(AP)方面都有不同程度的提高。与YOLOv5算法相比,DenseM-YOOv5算法的精度提高了2.24%,召回率提高了1.2%,AP提高了1.52%。尽管具有更高的参数大小,但DenseM-YOLOv5算法在森林火灾检测的精度和AP方面优于SimAM-YOLOv5算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Forest Fire Target Detection Model Based on Improved YOLOv5
To tackle the problem of missed detections in long-range detection scenarios caused by the small size of forest fire targets, initiatives have been undertaken to enhance the feature extraction and detection precision of models designed for forest fire imagery. In this study, two algorithms, DenseM-YOLOv5 and SimAM-YOLOv5, were proposed by modifying the backbone network of You Only Look Once version 5 (YOLOv5). From the perspective of lightweight models, compared to YOLOv5, SimAM-YOLOv5 reduced the parameter size by 28.57%. Additionally, although SimAM-YOLOv5 showed a slight decrease in recall rate, it achieved improvements in precision and average precision (AP) to varying degrees. The DenseM-YOLOv5 algorithm achieved a 2.24% increase in precision, as well as improvements of 1.2% in recall rate and 1.52% in AP compared to the YOLOv5 algorithm. Despite having a higher parameter size, the DenseM-YOLOv5 algorithm outperformed the SimAM-YOLOv5 algorithm in terms of precision and AP for forest fire detection.
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来源期刊
Fire-Switzerland
Fire-Switzerland Multiple-
CiteScore
3.10
自引率
15.60%
发文量
182
审稿时长
11 weeks
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