基于超参数改进的Tiny-YOLOv3火灾探测模型

Zeineb Daoud, A. B. Hamida, C. Amar
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摘要

火灾是世界面临的最具破坏性的灾难。因此,在视频监控场景中准确识别火灾区域,克服现有火灾探测方法的不足至关重要。近年来,深度学习模型被广泛应用于火灾识别领域。实际上,本文提出了一种新的深火探测方法。为了提高探测精度,开发了基于tiny-YOLOv3 (You Only Look Once version 3)网络的改进火灾模型。主要思想是根据提出的训练超参数进行微小的yolov3改进。生成的模型在构建和手动标记的数据集上进行训练和评估。结果表明,将所提出的训练启发式算法应用于tiny-YOLOv3网络,可以将火灾探测性能提高到平均精度(mAP)的81.65%。同时,该模型的检测精度达到97.6%,优于相关工作。
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A Fire Detection Model Based on Tiny-YOLOv3 with Hyperparameters Improvement
Fires are the most devastating disasters that the world can face. Thereby, it is crucial to exactly identify fire areas in video surveillance scenes, to overcome the shortcomings of the existing fire detection methods. Recently, deep learning models have been widely used for fire recognition applications. Indeed, a novel deep fire detection method is introduced in this paper. An improved fire model based on tiny-YOLOv3 (You Only Look Once version 3) network is developed in order to enhance the detection accuracy. The main idea is the tiny-YOLOv3 improvement according to the refined proposed training hyperparameters. The generated model is trained and evaluated on the constructed and manually labeled dataset. Results show that applying the proposed training heuristics with the tiny-YOLOv3 network improves the fire detection performance with 81.65% of mean Average Precision (mAP). Also, the designed model outperforms the related works with a detection precision of 97.6%.
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