“Motion-Attentive Network for Detecting Abnormal Situations in Surveillance Video” by Gim, Kim, Yoo and Nasridinov

  • ©U-Ju Gim, Jeong-Hun Kim, Kwan-Hee Yoo, and Aziz Nasridinov

  • ©U-Ju Gim, Jeong-Hun Kim, Kwan-Hee Yoo, and Aziz Nasridinov

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Entry Number: 47

Title:

    Motion-Attentive Network for Detecting Abnormal Situations in Surveillance Video

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Abstract:


    Recently, numerous studies have utilized deep-learning-based approaches to detect anomalies in surveillance cameras. However, while several of these studies used motion features to detect abnormal situations, detection problems can arise due to the sparse information and irregular patterns in certain abnormal situations. We propose a means of preserving motion patterns in abnormal situations through a network called MA-Net, which solves representation problems caused by a loss of sparse information and irregular patterns. We show through experiments that the proposed method is superior to state-of-the-art methods.

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Acknowledgements:


    This work was supported by Institute for Information & communications Technology Promotion (IITP) grant funded by the Korea government (MSIP) (No.2016-0-00406, SIAT CCTV Cloud Platform).


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