基于Inception-V3和SSD模型的航空图像森林火灾分类和检测

Sravya Sri Jandhyala, Ranga Rao Jalleda, Deepthi Meenakshi Ravuri
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引用次数: 1

摘要

野火造成的破坏比可见的要大得多。如果不被注意,大量种类繁多的物种很容易在一场野火中消失。包括部落、森林部门工作人员和救援人员在内的人口经常在野火中丧生。未被注意到的损害包括高碳排放、热浪、重建这样一个绿色环境所需的时间等。如果及早发现,可以大大减少这类野火的影响。这项研究使用了基于卷积神经网络(CNN)的Inception-V3模型,该模型根据是否存在火灾或烟雾对给定的航拍图像进行分类,以及检测图像中火灾或烟雾区域的Single Shot Detector模型。这些模型使用迁移学习在航空图像上进行训练,导致分类的总体准确率为88%,检测的总体准确率为91%。这些模型可用于在飞行器捕获的实时图像中探测火灾,帮助灾害管理实体立即作出相应的反应和响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forest Fire Classification and Detection in Aerial Images using Inception-V3 and SSD Models
Wildfires contribute to a lot of damage than what is visible. A significant population of a wide variety of species can easily disappear in a single wildfire if unnoticed. The human population including tribes, forest department staff, and rescuers too often lose their lives in wildfires. The unnoticed damage includes high carbon emission, heat waves, the amount of time that takes to rebuild such a green environment, etc. The impact of such wildfires can be highly reduced if detected at an earlier stage. This study has used a Convolutional Neural Network (CNN) based Inception-V3 model, which classifies a given aerial image based on the presence of fire or smoke, and a Single Shot Detector model that detects the fire or smoke areas in the image. These models were trained on aerial imagery using transfer learning which led to an overall accuracy of 88% for classification and 91% for detection. These models can be used to detect fires in live images captured by aerial vehicles helping the disaster management entities to react and respond immediately and accordingly.
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