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Domain independent static video summarization using sparse autoencoders and K-means clustering

机译:域独立静态视频汇总使用稀疏自动升端和K-means群集

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摘要

The ever growing video data over the internet has raised the challenge of efficient storage and retrieval of multimedia data. Video Summarization is one of the solutions to the problem which extracts interesting parts of a video. These summaries capture the essential content of the original video and enable the viewers to pick out interesting videos from huge video repositories by viewing its compact representation. To address the challenge of managing the video data, a new method for static video summarization is proposed here which is capable of describing input videos using a precise yet meaningful subset of frames. The method utilizes HOG descriptors of Gabor maps of input frames. A high-level representation of HOG descriptors is created using sparse auto-encoders (SAE). The final summary of the video is formed using candidate frames obtained after K-means clustering of these feature vectors. The summarization step is preceded by redundancy elimination to overcome computational burden. The method provides better results compared to the other state-of-the-art video summarization methods.
机译:互联网上越来越多的视频数据提出了高效存储和检索多媒体数据的挑战。视频摘要是提取视频的有趣部分的问题的解决方案之一。这些摘要捕获了原始视频的基本内容,使观众通过查看其紧凑的表示来使观众从巨大的视频存储库中挑出有趣的视频。为了解决管理视频数据的挑战,这里提出了一种新的静态视频摘要方法,其能够使用精确但有意义的帧子集来描述输入视频。该方法利用了输入帧的Gabor地图的HOG描述符。使用稀疏自动编码器(SAE)创建生猪描述符的高级表示。使用在这些特征向量之后获得的候选帧形成视频的最终概述。摘要步骤前面是冗余消除,以克服计算负担。与其他最先进的视频摘要方法相比,该方法提供了更好的结果。

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