2022
DOI: 10.48550/arxiv.2201.06804
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Visual Sensor Network Stimulation Model Identification via Gaussian Mixture Model and Deep Embedded Features

Luca Varotto,
Marco Fabris,
Giulia Michieletto
et al.

Abstract: Visual sensor networks constitute a fundamental class of distributed sensing systems, with unique complexity and performance research subjects. One of these novel challenges is represented by the identification of the network stimulation model (SM), which emerges when a set of detectable events trigger different subsets of the cameras. In this direction, the formulation of the related SM identification problem is proposed, along with a proper network observations generation method. Consequently, an approach ba… Show more

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