An ensemble of deep neural networks for object tracking

ICIP(2014)

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摘要
Object tracking in complex backgrounds with dramatic appearance variations is a challenging problem in computer vision. We tackle this problem by a novel approach that incorporates a deep learning architecture with an on-line AdaBoost framework. Inspired by its multi-level feature learning ability, a stacked denoising autoencoder (SDAE) is used to learn multi-level feature descriptors from a set of auxiliary images. Each layer of the SDAE, representing a different feature space, is subsequently transformed to a discriminative object/background deep neural network (DNN) classifier by adding a classification layer. By an on-line AdaBoost feature selection framework, the ensemble of the DNN classifiers is then updated on-line to robustly distinguish the target from the background. Experiments on an open tracking benchmark show promising results of the proposed tracker as compared with several state-of-the-art approaches.
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关键词
deep neural network,sdae,image representation,visual tracking,image coding,classification layer,online adaboost feature selection framework,neural net architecture,learning (artificial intelligence),object deep-neural network classifier,stacked denoising autoencoder,open tracking benchmark,multilevel feature descriptor learning ability,complex backgrounds,image denoising,auxiliary images,deep-neural network ensemble,boosting,adaboost,image classification,deep learning,object tracking,appearance variations,computer vision,deep-learning architecture,dnn classifier ensemble,feature space representation,background deep-neural network classifier
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