Shallow and deep learning for image classification

被引:3
作者
Ososkov G. [1 ]
Goncharov P. [2 ]
机构
[1] Joint Institute for Nuclear Research, Moscow oblast, Dubna
[2] Sukhoi State Technical University of Gomel, Gomel
来源
Optical Memory and Neural Networks (Information Optics) | 2017年 / 26卷 / 04期
关键词
Artificial neural networks; Autoencoder; Deep learning; Image recognition; Restricted bolzmann machine;
D O I
10.3103/S1060992X1704004X
中图分类号
学科分类号
摘要
The paper is focused on the idea to demonstrate the advantages of deep learning approaches over ordinary shallow neural network on their comparative applications to image classifying from such popular benchmark databases as FERET and MNIST. An autoassociative neural network is used as a standalone program realized the nonlinear principal component analysis for prior extracting the most informative features of input data for neural networks to be compared further as classifiers. A special study of the optimal choice of activation function and the normalization transformation of input data allows to improve efficiency of the autoassociative program. One more study devoted to denoising properties of this program demonstrates its high efficiency even on noisy data. Three types of neural networks are compared: feed-forward neural net with one hidden layer, deep network with several hidden layers and deep belief network with several pretraining layers realized restricted Boltzmann machine. The number of hidden layer and the number of hidden neurons in them were chosen by cross-validation procedure to keep balance between number of layers and hidden neurons and classification efficiency. Results of our comparative study demonstrate the undoubted advantage of deep networks, as well as denoising power of autoencoders. In our work we use both multiprocessor graphic card and cloud services to speed up our calculations. The paper is oriented to specialists in concrete fields of scientific or experimental applications, who have already some knowledge about artificial neural networks, probability theory and numerical methods. © Allerton Press, Inc., 2017.
引用
收藏
页码:221 / 248
页数:27
相关论文
共 67 条
[1]  
Ososkov G., Robust tracking by cellular automata and neural network with non-local weights, Appl. Sci. Artificial Neural Networks, Proc. SPIE 2492, (1995)
[2]  
Lebedev S., Hoehne C., Lebedev A., Ososkov G., Electron reconstruction and identication capabilities of the CBM experiment at FAIR, J. Phys.: Conf. Ser., 396, (2012)
[3]  
Baginyan S., Et al., Tracking by modified rotor model of neural network, Comput. Phys. Commun., 79, (1994)
[4]  
Galkin I., Et al., Feedback neural networks for ARTIST ionogram processing, Radio Sci., 31, 5, pp. 1119-1128, (1996)
[5]  
TMVA Users Guide
[6]  
Kisel I., Neskoromnyi V., Ososkov G., Applications of neural networks in experimental physics, Phys. Part. Nucl., 24, 6, pp. 657-676, (1993)
[7]  
Peterson C., Track finding with neural networks, Nucl. Instr. Meth. A, 279, (1986)
[8]  
Denby B., Neural networks and cellular automata in experimental high energy physics, Comput. Phys. Commun., 49, (1988)
[9]  
Peterson C., Hartman E., Explorations of the mean field theory learning algorithm, Neural Networks, 2, pp. 475-494, (1989)
[10]  
Kirkpatrick S., Gelatt C.D., Vecchi M.P., Optimization by simulated annealing, Science, 22, (1983)