Title :
Feature ensemble learning based on sparse autoencoders for image classification
Author :
Yaping Lu ; Li Zhang ; Bangjun Wang ; Jiwen Yang
Author_Institution :
Provincial Key Lab. for Comput. Inf. Process. Technol., Soochow Univ., Suzhou, China
Abstract :
Deep networks are well known for their powerful function approximations. To train a deep network efficiently, greedy layer-wise pre-training and fine tuning are required. Typically, pre-training, aiming to initialize a deep network, is implemented via unsupervised feature learning, with multiple feature representations generated. However, in general only the last layer representation is to be employed because of its abstraction and compactness being the best with comparisons to the ones of lower layers. To make full use of the representations of all layers, this paper proposes a feature ensemble learning method based on sparse autoencoders for image classification. Specifically, we train three softmax classifiers by using the representations of different layers, instead of one classifier trained by applying the last layer representation. Of the three softmax classifiers, two are obtained by training stacked autoencoders with fine tuning, and the other one is obtained by directly using a concatenation of two representations. To improve accuracy and stability of a single softmax classifier, the ensemble of multiple classifiers is considered, and some Naive Bayes combination rules are introduced to integrate the three classifiers. Experimental results on the MNTST and COIL datasets are presented, with comparisons to other classification methods.
Keywords :
belief networks; image classification; image representation; learning (artificial intelligence); COIL dataset; MNTST dataset; classification methods; deep networks; feature ensemble learning; feature representations; function approximation; greedy layer-wise pretraining; image classification; last layer representation; naive Bayes combination rules; softmax classifiers; sparse autoencoders; unsupervised feature learning; Conferences; Joints; Neural networks; Naive Bayes; autoencoder; deep network; feature ensemble; feature representation; softmax;
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
DOI :
10.1109/IJCNN.2014.6889415