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首页> 外文期刊>EURASIP journal on image and video processing >A static video summarization method based on the sparse coding of features and representativeness of frames
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A static video summarization method based on the sparse coding of features and representativeness of frames

机译:基于特征和帧代表性稀疏编码的静态视频汇总方法

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This paper presents a video summarization method that is specifically for the static summary of consumer videos. Considering that the consumer videos usually have unclear shot boundaries and many low-quality or meaningless frames, we propose a two-step approach where the first step skims a video and the second step performs content-aware clustering with keyframe selection. Specifically, the first step removes most of redundant frames that contain only little new information by employing the spectral clustering method with color histogram features. As a result, we obtain a condensed video that is shorter and has clearer temporal boundaries than the original. In the second step, we perform rough temporal segmentation and then apply refined clustering for each of the temporal segments, where each frame is represented by the sparse coding of SIFT features. The keyframe selection from each cluster is based on the measure of representativeness and visual quality of frames, where the representativeness is defined from the sparse coding and the visual quality is the combination of contrast, blur, and image skew measures. The problem of keyframe selection is to find the frames that have both representativeness and high quality, which is formulated as an optimization problem. Experiments on videos with various lengths show that the resulting summaries closely follow the important contents of videos.
机译:本文提出了一种视频摘要方法,专门用于消费者视频的静态摘要。考虑到消费者视频通常具有不清楚的镜头边界和许多低质量或无意义的帧,我们提出了一种两步方法,其中第一步是跳过视频,第二步是通过关键帧选择执行内容感知的聚类。具体来说,第一步是通过采用具有颜色直方图特征的光谱聚类方法,删除大多数仅包含很少新信息的冗余帧。结果,我们获得的压缩视频比原始视频短并且具有更清晰的时间边界。在第二步中,我们执行粗略的时间分割,然后对每个时间段应用改进的聚类,其中每个帧均由SIFT特征的稀疏编码表示。从每个聚类中选择关键帧是基于帧的代表性和视觉质量的度量,其中代表性是从稀疏编码定义的,而视觉质量是对比度,模糊和图像偏斜度量的组合。关键帧选择的问题是找到兼具代表性和高质量的帧,这被表述为优化问题。在各种长度的视频上进行的实验表明,得出的摘要紧随视频的重要内容。

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