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      CHAM: action recognition using convolutional hierarchical attention model

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          Abstract

          Recently, the soft attention mechanism, which was originally proposed in language processing, has been applied in computer vision tasks like image captioning. This paper presents improvements to the soft attention model by combining a convolutional LSTM with a hierarchical system architecture to recognize action categories in videos. We call this model the Convolutional Hierarchical Attention Model (CHAM). The model applies a convolutional operation inside the LSTM cell and an attention map generation process to recognize actions. The hierarchical architecture of this model is able to explicitly reason on multi-granularities of action categories. The proposed architecture achieved improved results on three publicly available datasets: the UCF sports dataset, the Olympic sports dataset and the HMDB51 dataset.

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          HMDB: A large video database for human motion recognition

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            Modeling Temporal Structure of Decomposable Motion Segments for Activity Classification

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              Trajectory-Based Modeling of Human Actions with Motion Reference Points

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                Author and article information

                Journal
                2017-05-08
                Article
                1705.03146
                b94091ac-c0ce-483f-93e7-3144f515b327

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                accepted by ICIP2017
                cs.CV

                Computer vision & Pattern recognition
                Computer vision & Pattern recognition

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