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ViCoS Lab

Authors

Matej Kristan, PhD
Matej Kristan, PhD
Danijel Skočaj, PhD
Danijel Skočaj, PhD
Aleš Leonardis, PhD
Aleš Leonardis, PhD

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Online Kernel Density Estimation For Interactive Learning

Matej Kristan, Danijel Skočaj and Aleš Leonardis
Image and Vision Computing, 2009,

In this paper we propose a Gaussian-kernel-based online kernel density estimation which can be used for applications of online probability density estimation and online learning. Our approach generates a Gaussian mixture model of the observed data and allows online adaptation from positive examples as well as from the negative examples. The adaptation from the negative examples is realized by a novel concept of unlearning in mixture models. Low complexity of the mixtures is maintained through a novel compression algorithm. In contrast to the existing approaches, our approach does not require fine-tuning parameters for a specific application, we do not assume specific forms of the target distributions and temporal constraints are not assumed on the observed data. The strength of the proposed approach is demonstrated with examples of online estimation of complex distributions, an example of unlearning, and with an interactive learning of basic visual concepts.

Faculty of Computer and Information Science

Visual Cognitive Systems Laboratory

University of Ljubljana

Faculty of Computer and Information Science

Večna pot 113
SI-1000 Ljubljana
Slovenia
Tel.: +386 1 479 8245