Title :
Efficient learning of relational object class models
Author :
Hillel, Aharon Bar ; Weinshall, Daphna ; Hertz, Tomer
Author_Institution :
Sch. of Comput. Sci. & Eng. & the Center for Neural Comput., Hebrew Univ., Jerusalem
Abstract :
We present an efficient method for learning part-based object class models. The models include location and scale relations between parts, as well as part appearance. Models are learnt from raw object and background images, represented as an unordered set of features extracted using an interest point detector. The object class is generatively modeled using a simple Bayesian network with a central hidden node containing location and scale information, and nodes describing object parts. The model´s parameters, however are optimized to reduce a loss function which reflects training error as in discriminative methods. Specifically, the optimization is done using a boosting-like technique with complexity linear in the number of parts and the number of features per image. This efficiency allows our method to learn relational models with many parts and features, and leads to improved results when compared with other methods. Extensive experimental results are described, using some common bench-mark datasets and three sets of newly collected data, showing the relative advantage of our method
Keywords :
belief networks; feature extraction; image classification; learning (artificial intelligence); object recognition; Bayesian network; feature extraction; interest point detector; part-based object class models; relational object class models; Bayesian methods; Computer science; Data mining; Detectors; Feature extraction; Humans; Lighting; Object detection; Object recognition; Optimization methods;
Conference_Titel :
Computer Vision, 2005. ICCV 2005. Tenth IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
0-7695-2334-X
DOI :
10.1109/ICCV.2005.83