Title :
Probabilistic appearance based object modeing and its application to car recognition
Author :
Saito, Mamoru ; Kitaguchi, Katsuhisa
Author_Institution :
Osaka Municipal Tech. Res. Inst., OMTRI, Osaka, Japan
Abstract :
This paper describes a method for object detection and recognition based on appearance based approach. We introduce a probabilistic model to describe the wide variation of object appearance in images. In our method, objects are modeled as probabilistic features of silhouette and edge. These features are extracted from the object images viewed from various distance and orientation, and form the training data set for template modeling. A Non linear template model is build by the combination of Principal Component Analysis (PCA) and Kernel Ridge Regression (KRR). Finally, the problem of object detection is formulated as maximum a posteriori (MAP) estimation using above model. Experiments are conducted on road surveillance, where our method is applied to a certain car type recognition.
Keywords :
automobiles; edge detection; feature extraction; maximum likelihood estimation; object detection; object recognition; principal component analysis; regression analysis; solid modelling; traffic engineering computing; video signal processing; car recognition; edge feature; feature extraction; kernel ridge regression; linear template model; maximum a posteriori estimation; object detection; object modeling; object recognition; principal component analysis; probabilistic appearance model; silhouette; template modeling; Bayesian methods; Cameras; Humans; Image edge detection; Object detection; Principal component analysis; Probabilistic logic; car recognition; kernel ridge regression; maximum a posteriori; probabilistic appearance model;
Conference_Titel :
SICE Annual Conference 2010, Proceedings of
Conference_Location :
Taipei
Print_ISBN :
978-1-4244-7642-8