We propose a formulation of people tracking problem as a Transductive Learning (TL) problem. TL is an effective semi-supervised learning technique by which many classification problems have been recently reinterpreted as learning labels from incomplete datasets. In our proposal the joint exploitation of spectral graph theory and Riemannian manifold learning tools leads to the formulation of a robust approach for appearance based tracking in Video Surveillance scenarios. The key advantage of the presented method is a continuously updated model of the tracked target, used in the TL process, that allows to on-line learn the target visual appearance and consequently to improve the tracker accuracy. Experiments on public datasets show an encouraging advancement over alternative state-of the-art techniques.
Appearance tracking by transduction in surveillance scenarios / Coppi, Dalia; Calderara, Simone; Cucchiara, Rita. - STAMPA. - (2011), pp. 142-147. (Intervento presentato al convegno 2011 8th IEEE International Conference on Advanced Video and Signal Based Surveillance, AVSS 2011 tenutosi a Klagenfurt, Austria nel Aug. 30 2011) [10.1109/AVSS.2011.6027309].
Appearance tracking by transduction in surveillance scenarios
COPPI, DALIA;CALDERARA, Simone;CUCCHIARA, Rita
2011
Abstract
We propose a formulation of people tracking problem as a Transductive Learning (TL) problem. TL is an effective semi-supervised learning technique by which many classification problems have been recently reinterpreted as learning labels from incomplete datasets. In our proposal the joint exploitation of spectral graph theory and Riemannian manifold learning tools leads to the formulation of a robust approach for appearance based tracking in Video Surveillance scenarios. The key advantage of the presented method is a continuously updated model of the tracked target, used in the TL process, that allows to on-line learn the target visual appearance and consequently to improve the tracker accuracy. Experiments on public datasets show an encouraging advancement over alternative state-of the-art techniques.Pubblicazioni consigliate
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