Learning Video Manifolds for Content Analysis of Crowded Scenes
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概要
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In this paper, we propose a new approach for recognizing group events and abnormality detection in a crowded scene. A manifold learning algorithm with temporal-constraints is proposed to embed a video of a crowded scene in a low-dimensional space. Our low dimensional representation of a video preserves the spatial temporal property of a video as well as the characteristic of the video. Recognizing video events and abnormality detection in a crowded scene is achieved by studying the video trajectory in the manifold space. We evaluate our proposed method on the state-of-the-art public data-sets containing different crowd events. Qualitative and quantitative results show the promising performance of the proposed method.
著者
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Eng How-Lung
Institute for Infocomm Research
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THIDA MYO
Institute for Infocomm Research
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MONEKOSSO DOROTHY
Digital Imaging Research Center, Kingston University
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Remagnino Paolo
Digital Imaging Research Center, Kingston University
関連論文
- Learning Video Manifolds for Content Analysis of Crowded Scenes
- Learning Video Manifolds for Content Analysis of Crowded Scenes