Abstract

To reduce the loss induced by forest fires, it is very important to detect the forest fire smoke in real time so that early and timely warning can be issued. Machine vision and image processing technology is widely used for detecting forest fire smoke. However, most of the traditional image detection algorithms require manual extraction of image features and, thus, are not real-time. This paper evaluates the effectiveness of using the deep convolutional neural network to detect forest fire smoke in real time. Several target detection deep convolutional neural network algorithms evaluated include the EfficientDet (EfficientDet: Scalable and Efficient Object Detection), Faster R-CNN (Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks), YOLOv3 (You Only Look Once V3), and SSD (Single Shot MultiBox Detector) advanced CNN (Convolutional Neural Networks) model. The YOLOv3 showed a detection speed up to 27 FPS, indicating it is a real-time smoke detector. By comparing these algorithms with the current existing forest fire smoke detection algorithms, it can be found that the deep convolutional neural network algorithms result in better smoke detection accuracy. In particular, the EfficientDet algorithm achieves an average detection accuracy of 95.7%, which is the best real-time forest fire smoke detection among the evaluated algorithms.

Highlights

  • Forest fire is one of the natural disasters with high frequency and great harmfulness in the world [1]

  • The Mean Average Precision (MAP) provides a comprehensive measure of the average accuracy of the detected target, and it indicates the average of each category of Average

  • The EfficientDet method 12showed of 15 the highest accuracy of 95.7%

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Summary

Introduction

Forest fire is one of the natural disasters with high frequency and great harmfulness in the world [1]. It usually spreads quickly and is difficult to control, causing intensive losses of human lives and properties. For early warning of forest fires, compared with fire flames, smoke appears earlier, spreads faster, and has a larger volume, which can be easier to identify visually [2,3,4]. The fast advances and implementation of field surveillance cameras in forests and enhanced computational capacity can especially reduce the cost of monitoring of forest fires by using machine vision [5]. Doing so provides a potential economic and effective way for early detection of forest fires if efficient and effective machine vision algorithms are available

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