5G-based video summarization: An analysis from a methodological point of view

IF 0.9 Q4 TELECOMMUNICATIONS
Asha Prashant Sathe, P. Jeyanthi
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引用次数: 0

Abstract

Surveillance is one of the fast-growing applications used for monitoring and watching people, objects, or the environment to collect information and provide security. The surveillance data is in video form, and analyzing large video is challenging because it is essential to do efficient video streaming online. Video summarization comprises selecting, extracting, and aggregating keyframes for creating a synopsis, which is challenging. Though several methods have been proposed for video summarization, most are inconsistent, poor in processing and delivering video content, and do not focus on solving the root problems interlinked with efficient streaming. Thus, video streaming applications require an efficient video summarization model that can overcome existing issues and challenges and improve the overall quality of service integrated with the advanced technology of 5G. This paper has aimed to discuss various methods, approaches, and technologies used for video summarization to design a better model. It also presents various learning models and a taxonomy of available methods and provides a detailed review. The summary of the model used evaluates its outcome and the existing methods for potential future research works. The proposed approach is compared with existing ones to prove the model's efficiency. The result shows that the proposed model achieved a 62.3 and 52.3 F1 score summarizing the TVSum and SumMe datasets, respectively.

基于5g的视频摘要:从方法论的角度分析
监控是一种快速发展的应用程序,用于监视和观察人、物体或环境,以收集信息并提供安全。监控数据以视频形式呈现,分析大型视频具有一定的挑战性,因为高效的在线视频流是必不可少的。视频摘要包括关键帧的选择、提取和聚合,这是一项具有挑战性的工作。虽然已经提出了几种视频摘要方法,但大多数方法都不一致,处理和传输视频内容的能力较差,并且没有重点解决与高效流相关的根本问题。因此,视频流应用需要一种高效的视频摘要模型,能够克服现有的问题和挑战,并与5G的先进技术相结合,提高整体服务质量。本文旨在讨论用于视频摘要的各种方法、途径和技术,以设计更好的模型。它还介绍了各种学习模型和可用方法的分类,并提供了详细的回顾。对所使用的模型进行总结,评估其结果和现有方法,以供未来潜在的研究工作使用。通过与已有方法的比较,验证了模型的有效性。结果表明,该模型对TVSum和SumMe数据集的F1得分分别为62.3和52.3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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