Criminal Intention Detection at Early Stages of Shoplifting Cases by Using 3D Convolutional Neural Networks

Author:

Martínez-Mascorro Guillermo A.ORCID,Abreu-Pederzini José R.ORCID,Ortiz-Bayliss José C.ORCID,Garcia-Collantes AngelORCID,Terashima-Marín HugoORCID

Abstract

Crime generates significant losses, both human and economic. Every year, billions of dollars are lost due to attacks, crimes, and scams. Surveillance video camera networks generate vast amounts of data, and the surveillance staff cannot process all the information in real-time. Human sight has critical limitations. Among those limitations, visual focus is one of the most critical when dealing with surveillance. For example, in a surveillance room, a crime can occur in a different screen segment or on a distinct monitor, and the surveillance staff may overlook it. Our proposal focuses on shoplifting crimes by analyzing situations that an average person will consider as typical conditions, but may eventually lead to a crime. While other approaches identify the crime itself, we instead model suspicious behavior—the one that may occur before the build-up phase of a crime—by detecting precise segments of a video with a high probability of containing a shoplifting crime. By doing so, we provide the staff with more opportunities to act and prevent crime. We implemented a 3DCNN model as a video feature extractor and tested its performance on a dataset composed of daily action and shoplifting samples. The results are encouraging as the model correctly classifies suspicious behavior in most of the scenarios where it was tested. For example, when classifying suspicious behavior, the best model generated in this work obtains precision and recall values of 0.8571 and 1 in one of the test scenarios, respectively.

Publisher

MDPI AG

Subject

Applied Mathematics,Modelling and Simulation,General Computer Science,Theoretical Computer Science

Reference61 articles.

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2. WatchOverGPT: A Framework for Real-Time Crime Detection and Response Using Wearable Camera and Large Language Model;2024 IEEE 48th Annual Computers, Software, and Applications Conference (COMPSAC);2024-07-02

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4. Crime Detection from Pre-Crime Video Analysis with Augmented Activity Information;2024 IEEE 3rd International Conference on Computing and Machine Intelligence (ICMI);2024-04-13

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