Accurate Object Localization with Shape Masks
IEEE Conference on Computer Vision & Pattern Recognition - jun 2007
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This paper proposes an object class localization approach
which goes beyond bounding boxes, as it also determines
the outline of the object. Unlike most current localization
methods, our approach does not require any hypothesis
parameter space to be defined. Instead, it directly
generates, evaluates and clusters shape masks. Thus, the
presented framework produces much richer answers to the
object class localization problem. For example, it easily
learns and detects possible object viewpoints and articulations,
which are often well characterized by the object
outline. We evaluate the proposed approach on the challenging
natural-scene Graz-02 object classes dataset. The
results demonstrate the extended localization capabilities of
our method.
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BibTex references
@InProceedings{MS07a,
author = "Marcin Marsza{\l}ek and Cordelia Schmid",
title = "Accurate Object Localization with Shape Masks",
booktitle = "IEEE Conference on Computer Vision \& Pattern Recognition",
month = "jun",
year = "2007",
keywords = "LEAR",
url = "http://lear.inrialpes.fr/pubs/2007/MS07a"
}
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