Journal of Applied Science and Engineering

Published by Tamkang University Press

1.30

Impact Factor

1.60

CiteScore

Min Zhang  1

1Department of Mechanical and Electronic Engineering, Shandong Management University, Jinan 250357, P.R. China


 

Received: November 13, 2018
Accepted: June 7, 2019
Publication Date: December 1, 2019

Download Citation: ||https://doi.org/10.6180/jase.201912_22(4).0008  

ABSTRACT


At present, deep belief networks (DBN) is widely used in the field of image processing. However, its random processing and Gibbs sampling make the same topology network extract the same image with different characteristics. In order to reduce this kind of difference, this paper proposes a dual DBN model (Dual-DBN), which consists of left-right symmetric sub-networks with the same dimensional feature extraction function. Each sub-network uses the matrix coefficient to adaptively adjust feature dimension of hidden layer, to obtain the optimal number of nodes. In order to optimize the network, the difference metric function is used as model loss function, and then the model parameters are fine-tuned by BPalgorithm. The experimental data is the traffic history monitoring data of six different types of roads in Jinan City, Shandong Province. Experimental tests show that the model has a higher accuracy compared with that of the traditional deep network.


Keywords: Deep Belief Networks, Difference Metric Function, Symmetric Sub-networks, Dual-DBN, Matrix Coefficient


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