基于融合的森林火灾自动探测深度学习模型

Mesfer Al Duhayyim, Majdy M. Eltahir, Ola Abdelgney Omer Ali, Amani Abdulrahman Albraikan, Fahd N. Al-Wesabi, Anwer Mustafa Hilal, Manar Ahmed Hamza, Mohammed Rizwanullah
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引用次数: 0

摘要

地球资源和环境监测是必不可少的领域,可用于调查支持可持续政策制定、管制措施及其执行的环境条件和自然资源。大规模森林火灾被认为是影响全球气候变化和生命的主要有害危害。因此,利用自动化工具对森林火灾进行早期识别,对于在很大程度上避免火灾的蔓延至关重要。因此,本文重点研究了基于融合的深度学习(AFFD-FDL)模型用于环境监测的自动森林火灾检测设计。AFFD-FDL技术涉及基于熵的特征提取融合模型的设计。将使用梯度直方图(HOG)的手工特征与使用SqueezeNet和Inception v3模型的深度特征相结合。此外,采用基于最优极限学习机(ELM)的分类器来识别是否存在火灾。为了合理调整ELM模型的参数,采用了对向萤火虫群优化算法(OGSO),提高了森林火灾探测性能。在基准数据集上进行了广泛的模拟分析,并从几个方面检查了结果。实验结果突出了AFFD-FDL技术相对于最新技术的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion-Based Deep Learning Model for Automated Forest Fire Detection
Earth resource and environmental monitoring are essential areas that can be used to investigate the environmental conditions and natural resources supporting sustainable policy development, regulatory measures, and their implementation elevating the environment. Large-scale forest fire is considered a major harmful hazard that affects climate change and life over the globe. Therefore, the early identification of forest fires using automated tools is essential to avoid the spread of fire to a large extent. Therefore, this paper focuses on the design of automated forest fire detection using a fusion-based deep learning (AFFD-FDL) model for environmental monitoring. The AFFD-FDL technique involves the design of an entropy-based fusion model for feature extraction. The combination of the handcrafted features using histogram of gradients (HOG) with deep features using SqueezeNet and Inception v3 models. Besides, an optimal extreme learning machine (ELM) based classifier is used to identify the existence of fire or not. In order to properly tune the parameters of the ELM model, the oppositional glowworm swarm optimization (OGSO) algorithm is employed and thereby improves the forest fire detection performance. A wide range of simulation analyses takes place on a benchmark dataset and the results are inspected under several aspects. The experimental results highlighted the betterment of the AFFD-FDL technique over the recent state of art techniques.
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