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Research on target recognition method based on multi-feature information fusion decision

XIAOQIAN ZHANG1,* , HANSHAN LI1, JUNCHAI GAO1

Affiliation

  1. School of Electronic and Information Engineering, Xi’an Technological University, Xi’an, 710021, China

Abstract

In order to improve target tracking stability and target recognition rate, this paper proposes a multi-feature fusion recognition algorithm based on BP neural network and D-S evidence theory, extracts the target features by RGB color weighted histogram and Sobel edge weighted histogram, establishes the decision rule model by combing BP neural network and D-S evidence theory, utilizes the BP neural network to evaluate the reliability of evidence source, according to the characteristic of reliability evaluation, obtains the target multi-feature information fusion decision and recognition of the target by the D-S combination rule. Through experimental comparison, the results show that the target recognition rate is about 95.5% and the misjudgement rate is about 4.5% by using multi-feature information fusion decision under the same conditions, in addition, the recognition results validate that the proposed image multi-feature information fusion decision method can improve effectively the target recognition rate..

Keywords

Information fusion, BP neural network, D-S evidence theory, Multi-feature fusion decision.

Citation

XIAOQIAN ZHANG, HANSHAN LI, JUNCHAI GAO, Research on target recognition method based on multi-feature information fusion decision, Optoelectronics and Advanced Materials - Rapid Communications, 12, 11-12, November-December 2018, pp.634-643 (2018).

Submitted at: July 19, 2018

Accepted at: Nov. 29, 2018