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Video scene analysis: an overview and challenges on deep learning algorithms

机译:视频场景分析:深度学习算法的概述和挑战

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摘要

Video scene analysis is a recent research topic due to its vital importance in many applications such as real-time vehicle activity tracking, pedestrian detection, surveillance, and robotics. Despite its popularity, the video scene analysis is still an open challenging task and require more accurate algorithms. However, the advances in deep learning algorithms for video scene analysis have been emerged in last few years for solving the problem of real-time processing. In this paper, a review of the recent developments in deep learning and video scene analysis problems is presented. In addition, this paper also briefly describes the most recent used datasets along with their limitations. Moreover, this review provides a detailed overview of the particular challenges existed in real-time video scene analysis that has been contributed towards activity recognition, scene interpretation, and video description/captioning. Finally, the paper summarizes the future trends and challenges in video scene analysis tasks and our insights are provided to inspire further research efforts.
机译:由于视频场景分析在许多应用中(例如实时车辆活动跟踪,行人检测,监视和机器人技术)至关重要,因此它是最近的研究主题。尽管它很受欢迎,但视频场景分析仍然是一项艰巨的任务,需要更准确的算法。但是,近几年来,用于解决视频实时分析问题的深度学习算法已经在视频场景分析中取得了进步。本文介绍了深度学习和视频场景分析问题的最新进展。此外,本文还简要介绍了最近使用的数据集及其局限性。此外,此评论提供了对实时视频场景分析中存在的特定挑战的详细概述,这些挑战已对活动识别,场景解释和视频描述/字幕做出了贡献。最后,本文总结了视频场景分析任务的未来趋势和挑战,并提供了我们的见识以激发进一步的研究工作。

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