Zhu Xiaobin (祝晓斌),Wang Qian,Li Haisheng,Guo Xiaoxia,Xi Yan,Shen Yang.[J].高技术通讯(英文),2016,22(2):192~198 |
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Abnormal activity detection for surveillance video synopsis |
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DOI:10.3772/j.issn.1006-6748.2016.02.011 |
中文关键词: |
英文关键词: abnormal activity detection, key observation selection, sparse coding, minimum description length (MDL), video synopsis |
基金项目: |
Author Name | Affiliation | Zhu Xiaobin (祝晓斌) | | Wang Qian | | Li Haisheng | | Guo Xiaoxia | | Xi Yan | | Shen Yang | |
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中文摘要: |
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英文摘要: |
Video synopsis is an effective and innovative way to produce short video abstraction for huge video archives, while keeping the dynamic characteristic of activities in the original video. Abnormal activity, as the critical event, is always the main concern in video surveillance context. However, in traditional video synopsis, all the normal and abnormal activities are condensed together equally, which can make the synopsis video confused and worthless. In addition, the traditional video synopsis methods always neglect redundancy in the content domain. To solve the above-mentioned issues, a novel video synopsis method is proposed based on abnormal activity detection and key observation selection. In the proposed algorithm, activities are classified into normal and abnormal ones based on the sparse reconstruction cost from an atomically learned activity dictionary. And key observation selection using the minimum description length principle is conducted for eliminating content redundancy in normal activity. Experiments conducted in publicly available datasets demonstrate that the proposed approach can effectively generate satisfying synopsis videos. |
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