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MMM
2009
Springer

A Multimodal Constellation Model for Object Category Recognition

14 years 9 months ago
A Multimodal Constellation Model for Object Category Recognition
Object category recognition in various appearances is one of the most challenging task in the object recognition research fields. The major approach to solve the task is using the Bag of Features (BoF). The constellation model is another approach that has the following advantages: (a) Adding and changing the candidate categories is easy; (b) Its description accuracy is higher than BoF; (c) Position and scale information, which are ignored by BoF, can be used effectively. On the other hand, this model has two weak points: (1) It is essentially an unimodal model that is unsuitable for categories with many types of appearances. (2) The probability function that represents the constellation model takes a long time to calculate. In this paper we propose a “Multimodal Constellation Model” to solve the two weak points of the constellation model. Experimental results showed the effectivity of the proposed model by comparison to methods using BoF.
Yasunori Kamiya, Tomokazu Takahashi, Ichiro Ide, H
Added 17 Mar 2010
Updated 17 Mar 2010
Type Conference
Year 2009
Where MMM
Authors Yasunori Kamiya, Tomokazu Takahashi, Ichiro Ide, Hiroshi Murase
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