We present a multi-cue fusion method for tracking with particle filters which relies on a novel hierarchical sampling strategy. Similarly to previous works, it tackles the problem of tracking in a relatively high-dimensional state space by dividing such a space into partitions, each one corresponding to a single cue, and sampling from them in a hierarchical manner. However, unlike other approaches, the order of partitions is not fixed a priori but changes dynamically depending on the reliability of each cue, i.e. more reliable cues are sampled first. We call this approach Dynamic Partitioned Sampling (DPS). The reliability of each cue is measured in terms of its ability to discriminate the object with respect to the background, where the background is not described by a fixed model or by random patches but is represented by a set of informative ™background particles" which are tracked in order to be as similar as possible to the object. The effectiveness of this general framework is de...

Dynamic partitioned sampling for tracking with discriminative features / Duffner, Stefan; Odobez, Jean-Marc; Ricci, Elisa. - (2009), pp. 71.1-71.11. ( 2009 20th British Machine Vision Conference, BMVC 2009 London, gbr 2009) [10.5244/C.23.71].

Dynamic partitioned sampling for tracking with discriminative features

Ricci, Elisa
2009-01-01

Abstract

We present a multi-cue fusion method for tracking with particle filters which relies on a novel hierarchical sampling strategy. Similarly to previous works, it tackles the problem of tracking in a relatively high-dimensional state space by dividing such a space into partitions, each one corresponding to a single cue, and sampling from them in a hierarchical manner. However, unlike other approaches, the order of partitions is not fixed a priori but changes dynamically depending on the reliability of each cue, i.e. more reliable cues are sampled first. We call this approach Dynamic Partitioned Sampling (DPS). The reliability of each cue is measured in terms of its ability to discriminate the object with respect to the background, where the background is not described by a fixed model or by random patches but is represented by a set of informative ™background particles" which are tracked in order to be as similar as possible to the object. The effectiveness of this general framework is de...
2009
British Machine Vision Conference, BMVC 2009 - Proceedings
Duffner, Stefan
London
British Machine Vision Association, BMVA
9781901725391
Duffner, Stefan; Odobez, Jean-Marc; Ricci, Elisa
Dynamic partitioned sampling for tracking with discriminative features / Duffner, Stefan; Odobez, Jean-Marc; Ricci, Elisa. - (2009), pp. 71.1-71.11. ( 2009 20th British Machine Vision Conference, BMVC 2009 London, gbr 2009) [10.5244/C.23.71].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/199898
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