基于深度学习的森林火灾探测视频自动摘要方法

A. N. Al-Masri
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引用次数: 1

摘要

由于视频数据呈指数级增长,视频的自动检查已变得必不可少。一个重要的需求是自动视频摘要处理的能力,这有助于从监控到安全的广泛应用领域。它有助于在减少内存和时间的情况下监视用户应用程序。为此,本文设计了一种基于深度学习的森林火灾自动视频摘要方法(ADLVS-FFD)。ADLVS-FFD技术旨在总结捕获的视频并检测其中是否存在森林火灾。此外,ADLVS-FFD技术还涉及到帧分割、特征提取和分类等不同的子过程。此外,采用合并高斯混合模型(MGMM)提取关键帧和特征。采用长短期记忆(LSTM)模型对输入图像进行检测和分类,分为正常图像和森林火灾图像。为了确保ADLVS-FFD技术的更好性能,在基准视频数据集上进行了全面的实验验证过程。由此产生的实验验证过程突出了ADLVS-FFD技术优于最近的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Deep Learning based Video Summarization Approach for Forest Fire Detection
Due to the exponential increase in video data, an automated examination of videos has become essential. A significant requirement is the capability of the automated video summarization process, which is helpful in vast application areas from surveillance to security. It assists in monitoring the user application with reduced memory and time. Therefore, this paper designs an automated deep learning-based video summarization approach for forest fire detection (ADLVS-FFD). The ADLVS-FFD technique aims to summarize the captured videos and detects the existence of forest fire in it. In addition, the ADLVS-FFD technique involves different subprocesses such as frame splitting, feature extraction, and classification. Besides, a merged Gaussian mixture model (MGMM) is used to extract keyframes and features. Moreover, the long short-term memory (LSTM) model is employed to detect and classify input images into normal and forest fire images. To ensure the better performance of the ADLVS-FFD technique, a comprehensive experimental validation process takes place on a benchmark video dataset. The resultant experimental validation process highlighted the supremacy of the ADLVS-FFD technique over the recent methods.
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CiteScore
1.70
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