Title :
K-NN boosting prototype learning for object classification
Author :
Piro, Paolo ; Barlaud, Michel ; Noch, Richard ; Nielsen, Frank
Author_Institution :
CNRS, Univ. of Nice-Sophia Antipolis, Sophia Antipolis, France
Abstract :
Object classification is a challenging task in computer vision. Many approaches have been proposed to extract meaningful descriptors from images and classifying them in a supervised learning framework. In this paper, we revisit the classic k-nearest neighbors (k-NN) classification rule, which has shown to be very effective when dealing with local image descriptors. However, k-NN still features some major drawbacks, mainly due to the uniform voting among the nearest prototypes in the feature space. In this paper, we propose a generalization of the classic k-NN rule in a supervised learning (boosting) framework. Namely, we redefine the voting rule as a strong classifier that linearly combines predictions from the k closest prototypes. To induce this classifier, we propose a novel learning algorithm, MLNN (Multiclass Leveraged Nearest Neighbors), which gives a simple procedure for performing prototype selection very efficiently. We tested our method on 12 categories of objects, and observed significant improvement over classic k-NN in terms of classification performances.
Keywords :
computer vision; image classification; learning (artificial intelligence); classic k-nearest neighbors boosting prototype learning; computer vision; local image descriptors; multiclass leveraged nearest neighbors; object classification; supervised learning framework; uniform voting; Indium phosphide;
Conference_Titel :
Image Analysis for Multimedia Interactive Services (WIAMIS), 2010 11th International Workshop on
Conference_Location :
Desenzano del Garda
Print_ISBN :
978-1-4244-7848-4
Electronic_ISBN :
978-88-905328-0-1