Yin Hang, Chen Mingxuan, Lin Yinqi, Luo Shixuan, Chen Yalin, Yang Song, Gao Lijun
College of Big Data and Internet, Shenzhen Technology University, Shenzhen, 518118, China.
College of Information Science and Technology, Zhongkai University of Agriculture and Engineering, Guangzhou, 510225, China.
Heliyon. 2023 Jul 31;9(8):e18606. doi: 10.1016/j.heliyon.2023.e18606. eCollection 2023 Aug.
The global food crisis is becoming increasingly severe, and frequent grain bins fires can also lead to significant food losses at the same time. Accordingly, this paper proposes a model-compressed technique for promptly detecting small and thin smoke at the early stages of fire in grain bins. The proposed technique involves three key stages: (1) conducting smoke experiments in a back-up bin to acquire a dataset; (2) proposing a real-time detection model based on YOLO v5s with sparse training, channel pruning and model fine-tuning, and (3) the proposed model is subsequently deployed on different current edge devices. The experimental results indicate the proposed model can detect the smoke in grain bins effectively, with mAP and detection speed are 94.90% and 109.89 FPS respectively, and model size reduced by 5.11 MB. Furthermore, the proposed model is deployed on the edge device and achieved the detection speed of 49.26 FPS, thus allowing for real-time detection.
全球粮食危机日益严峻,同时频繁发生的粮囤火灾也会导致大量粮食损失。因此,本文提出一种模型压缩技术,用于在粮囤火灾早期及时检测细小烟雾。所提出的技术包括三个关键阶段:(1) 在备用粮囤中进行烟雾实验以获取数据集;(2) 提出一种基于YOLO v5s的实时检测模型,采用稀疏训练、通道剪枝和模型微调;(3) 随后将所提出的模型部署在不同的当前边缘设备上。实验结果表明,所提出的模型能够有效检测粮囤中的烟雾,平均精度均值(mAP)和检测速度分别为94.90%和109.89帧每秒,模型大小减少了5.11MB。此外,所提出的模型部署在边缘设备上实现了49.26帧每秒的检测速度,从而实现了实时检测。