ABSTRACT
In this paper we describe a motion detection module, which is part of Horus, a video surveillance system already deployed in field. The module integrates and improves upon existing algorithms, whose combination proves to be particularly effective in automatically detecting motion sequences in very noisy outdoor environments, with both diurnal and nocturnal illumination conditions. The system has been tested on some public-domain benchmarks, and also on a real application.
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Index Terms
- A motion detection system for video surveillance
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