Detection of Shoplifting on Video Using a Hybrid Network

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Abstract

Shoplifting is a major problem for shop owners and many other parties, including the police. Video surveillance generates huge amounts of information that staff cannot process in real time. In this article, the problem of detecting shoplifting in video records was solved using a classifier, which was a hybrid neural network. The hybrid neural network included convolutional and recurrent ones. The convolutional network was used to extract features from the video frames. The recurrent network processed the time sequence of the video frames features and classified the video fragments. In this work, gated recurrent units were selected as the recurrent network. The well-known UCF-Crime dataset was used to form the training and test datasets. The classification results showed a high accuracy of 93%, which was higher than the accuracy of the classifiers considered in the review. Further research will focus on the practical implementation of the proposed hybrid neural network.

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APA

Kirichenko, L., Radivilova, T., Sydorenko, B., & Yakovlev, S. (2022). Detection of Shoplifting on Video Using a Hybrid Network. Computation, 10(11). https://doi.org/10.3390/computation10110199

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