In this paper, we propose a novel method to detect abnormal events from videos based on a maximum a posteriori (MAP). Conventional methods consider the events with low-probability with respect to a model of normal behavior as anomaly. Different from the traditional approaches, the anomaly detection is achieved by a MAP estimation in our framework. The prior knowledge is obtained from the background subtraction due to the fact that the anomalies often occur at the locations consisting of moving objects, and the likelihood function is computed by comparing the similarity between the testing samples and a designed maximum grid template. Experiments on three public databases show that our method can effectively detect abnormal events in complex scenes.
CITATION STYLE
S, S., & S, A. (2013). Comparative Study on Vehicle Detection Techniques in Aerial Surveillance. International Journal on Cybernetics & Informatics, 2(4), 9–16. https://doi.org/10.5121/ijci.2013.2402
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