Abstract

Autonomous systems can help firefighting operations by detecting and locating the fire spot from surveillance images and videos. Similar to many other areas of computer vision, Convolutional Neural Networks (CNNs) have achieved state-of-the-art results for fire and smoke detection and segmentation. In practice, input images to a CNN are usually downsized to fit into the network to avoid computational complexities and restricted memory problems. Although in many applications downsizing is not an issue, in the early phases of fire ignitions downsizing may eliminate the fire regions since the incident regions are small. In this paper, we propose a novel method to segment fire and smoke regions in high resolution images based on a multi-resolution iterative quad-tree search algorithm , which manages the application of classification and segmentation CNNs to focus the attention on informative parts of the image. The proposed method is more computationally efficient compared to processing the whole high resolution input, and contains parameters that can be tuned based on the needed scale precision. The results show that the proposed method is capable of detecting and segmenting fire and smoke with higher accuracy and is useful for segmenting small regions of incident in high resolution aerial images in a computationally efficient way.

Highlights

  • Neural Networks and Quad-TreeOver the last two decades, automated systems to support forest fire fighting have shown an increasing popularity as a research topic due to the growing incidence of forest fires around the world

  • [4] Fire and smoke detection methods in images are the essential part in these systems, which are based on Artificial Intelligence (AI)

  • The images gathered for the fire segmentation dataset mainly came from two sources: Corsican dataset [31] (RGB images with pixel wise labelling), and a batch of images gathered online that were manually labeled to extend the size of the dataset

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Summary

Introduction

Over the last two decades, automated systems to support forest fire fighting have shown an increasing popularity as a research topic due to the growing incidence of forest fires around the world. 1,300,000 hectares of forest and detects the occurrence of fire through smoke analysis on the images captured. Unmanned Aerial Vehicles (UAVs) equipped with imaging sensors have become popular in diverse forest and agriculture applications [2,3], including the detection and monitoring of wildfires [4] Fire and smoke detection methods in images are the essential part in these systems, which are based on Artificial Intelligence (AI). The classical methods for fire detection were mainly based on handcrafted features obtained based on RGB color values [5,6,7].

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