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Real-time Aggressive Action Recognition using Deep Learning in a Multifarious Setting

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Monash University Figshare2026-02-11 更新2026-07-07 收录
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https://bridges.monash.edu/articles/thesis/Real-time_Aggressive_Action_Recognition_using_Deep_Learning_in_a_Multifarious_Setting/22083245
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资源简介:
The epidemic of violent crimes worldwide necessitates an active-based video surveillance network to combat these criminal acts. In this context, autonomously detecting aggressors and weapons is crucial in modelling human-weapon interactions for aggressive action recognition. However, current object detectors and human-object interaction detectors using deep learning cannot reliably capture surveillance-based humans and weapons in multifarious and complex scenarios. To address these problems, this research puts forward a novel surveillance-based human-object interaction (HOI) detector with an aggressive HOI dataset for accurate aggressive action detection. In the end, the outcomes of this research could potentially pioneer real-time crime detection in video surveillance.
创建时间:
2023-02-12
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