Tackling Threatening behavior through a Semantic Approach

2022 25th International Conference on Information Fusion (FUSION)(2022)

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摘要
We introduce a new approach to characterize and detect threatening behaviors in surveillance systems, without relying on history or expertise. This approach consists in simulating the worst-case attack plans, fusing their semantic descriptions and using the produced patterns to raise alerts in operational conditions. We demonstrate our set of tools on a simple scenario involving geolocated sensors looking for moving vehicles targeting a protected objective. We find that the system is able to recover well-grounded graph patterns defining detection rules which make sense in the operational context. We believe that our approach achieves a relevant compromise between data-based and expertise-based systems, and allows for a good balance between efficiency and understandability.
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关键词
Trajectory Fusion,Optimization,Motion Planning,Semantization,Threat Detection,Situation Awareness
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