Detecting Instances of Shape Classes That Exhibit Variable Structure


Autoria(s): Athitsos, Vassilis; Wang, Jingbin; Sclaroff, Stan; Betke, Margrit
Data(s)

20/10/2011

20/10/2011

13/06/2005

Resumo

This paper proposes a method for detecting shapes of variable structure in images with clutter. The term "variable structure" means that some shape parts can be repeated an arbitrary number of times, some parts can be optional, and some parts can have several alternative appearances. The particular variation of the shape structure that occurs in a given image is not known a priori. Existing computer vision methods, including deformable model methods, were not designed to detect shapes of variable structure; they may only be used to detect shapes that can be decomposed into a fixed, a priori known, number of parts. The proposed method can handle both variations in shape structure and variations in the appearance of individual shape parts. A new class of shape models is introduced, called Hidden State Shape Models, that can naturally represent shapes of variable structure. A detection algorithm is described that finds instances of such shapes in images with large amounts of clutter by finding globally optimal correspondences between image features and shape models. Experiments with real images demonstrate that our method can localize plant branches that consist of an a priori unknown number of leaves and can detect hands more accurately than a hand detector based on the chamfer distance.

National Science Foundation (IIS 0329009, IIS 0308213, IIS-0093367, EIA 0202067, EIA 0326483); Office of Naval Research (N00014-03-1-0108)

Identificador

http://hdl.handle.net/2144/1847

Idioma(s)

en_US

Publicador

Boston University Computer Science Department

Relação

BUCS Technical Reports;BUCS-TR-2005-021

Tipo

Technical Report