inria-00326714, version 1
Unsupervised Learning of Behavioural Patterns for Video-Surveillance
The 1st International Workshop on Machine Learning for Vision-based Motion Analysis - MLVMA'08 (2008)
Abstract: Unsupervised learning is a way to extract knowledge from noisy and complex sets of unlabeled data. The video-surveillance setting provides a potentially huge amount of unlabeled information on a given scene. In this paper we explore the use of spectral clustering to learn common behaviours from sets of dynamic events from a video-surveillance system. In particular we discuss how temporal data, characterized by variable lengths and an internal ordering, may be exploited effectively by means of appropriate representations and kernel functions. An experimental assessment on synthetic and real data guides us to an effective solution based on the use of strings.
- 1:
- Università di Genova
- Domain : Computer Science/Computer Vision and Pattern Recognition
- inria-00326714, version 1
- http://hal.inria.fr/inria-00326714
- oai:hal.inria.fr:inria-00326714
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- Submitted on: Sunday, 5 October 2008 12:28:49
- Updated on: Monday, 6 October 2008 09:43:44


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