EM-Based Mixture Models Applied to Video Event Detection
Alessandra Martins Coelho, Vania V. Estrela

TL;DR
This paper explores the application of EM-based mixture models, including Probabilistic PCA, to improve video event detection in surveillance systems by addressing challenges like clutter, occlusions, and complex scenes.
Contribution
It introduces EM-based mixture models and Probabilistic PCA techniques tailored for video event detection, enhancing computational efficiency and robustness.
Findings
EM-based mixture models improve detection accuracy
Probabilistic PCA reduces computational load
Evaluation metrics for EM implementations are discussed
Abstract
Surveillance system (SS) development requires hi-tech support to prevail over the shortcomings related to the massive quantity of visual information from SSs. Anything but reduced human monitoring became impossible by means of its physical and economic implications, and an advance towards an automated surveillance becomes the only way out. When it comes to a computer vision system, automatic video event comprehension is a challenging task due to motion clutter, event understanding under complex scenes, multilevel semantic event inference, contextualization of events and views obtained from multiple cameras, unevenness of motion scales, shape changes, occlusions and object interactions among lots of other impairments. In recent years, state-of-the-art models for video event classification and recognition include modeling events to discern context, detecting incidents with only one…
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Taxonomy
MethodsPrincipal Components Analysis
