TextonBoost: Joint appearance, shape and context modeling for multi-class object recognition and segmentation

TitleTextonBoost: Joint appearance, shape and context modeling for multi-class object recognition and segmentation
Publication TypeConference Paper
Year of Publication2006
AuthorsShotton, J, Winn, J, Rother, C, Criminisi, A
Conference NameLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
ISBN Number3540338322
Keywordsaeroplanes) and articulated objects (eg body, bikes, cow), faces, g grass, highly structured (eg cars, trees)

This paper proposes a new approach to learning a discriminative model of object classes, incorporating appearance, shape and context information efficiently. The learned model is used for automatic visual recognition and semantic segmentation of photographs. Our discriminative model exploits novel features, based on textons, which jointly model shape and texture. Unary classification and feature selection is achieved using shared boosting to give an efficient classifier which can be applied to a large number of classes. Accurate image segmentation is achieved by incorporating these classifiers in a conditional random field. Efficient training of the model on very large datasets is achieved by exploiting both random feature selection and piecewise training methods. High classification and segmentation accuracy are demonstrated on three different databases: i) our own 21-object class database of photographs of real objects viewed under general lighting conditions, poses and viewpoints, ii) the 7-class Corel subset and iii) the 7-class Sowerby database used in [1]. The proposed algorithm gives competitive results both for highly textured (e.g. grass, trees), highly structured (e.g. cars, faces, bikes, aeroplanes) and articulated objects (e.g. body, cow). © Springer-Verlag Berlin Heidelberg 2006.

Citation KeyShotton2006