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PSIVT
2009
Springer

Recognizing Multiple Objects via Regression Incorporating the Co-occurrence of Categories

13 years 11 months ago
Recognizing Multiple Objects via Regression Incorporating the Co-occurrence of Categories
Abstract. Most previous methods for generic object recognition explicitly or implicitly assume that an image contains objects from a single category, although objects from multiple categories often appear together in an image. In this paper, we present a novel method for object recognition that explicitly deals with objects of multiple categories coexisting in an image. Furthermore, our proposed method aims to recognize objects by taking advantage of a scene’s context represented by the co-occurrence relationship between object categories. Specifically, our method estimates the mixture ratios of multiple categories in an image via MAP regression, where the likelihood is computed based on the linear combination model of frequency distributions of local features, and the prior probability is computed from the co-occurrence relation. We conducted a number of experiments using the PASCAL dataset, and obtained the results that lend support to the effectiveness of the proposed method.
Takahiro Okabe, Yuhi Kondo, Kris M. Kitani, Yoichi
Added 27 May 2010
Updated 27 May 2010
Type Conference
Year 2009
Where PSIVT
Authors Takahiro Okabe, Yuhi Kondo, Kris M. Kitani, Yoichi Sato
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