Spatio-Temporal Fusion for Learning of Regions of Interests Over Multiple Video Streams.

ADVANCES IN VISUAL COMPUTING, PT II (ISVC 2015)(2015)

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摘要
Video surveillance systems must process and manage a growing amount of data captured over a network of cameras for various recognition tasks. In order to limit human labour and error, this paper presents a spatial-temporal fusion approach to accurately combine information from Region of Interest (RoI) batches captured in a multi-camera surveillance scenario. In this paper, feature-level and score-level approaches are proposed for spatial-temporal fusion of information to combine information over frames, in a framework based on ensembles of GMM-UBM (Universal Background Models). At the feature-level, features in a batch of multiple frames are combined and fed to the ensemble, whereas at the score-level the outcome of ensemble for individual frames are combined. Results indicate that feature-level fusion provides higher level of accuracy in a very efficient way.
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关键词
Time Slot, Universal Background Model, Budget Level, Decision Level Fusion, Visible Light Camera
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