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Evidence fusion procedure based on hybrid DSm model 被引量:2

Evidence fusion procedure based on hybrid DSm model
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摘要 Dezert-Smarandache(DSm) theory, a new information fusion theory, is widely applied in image processing, multiple targets tracking identification, and other areas for its excellent processing ability of imperfect information. However, earlier research on DSm theory mainly focused on one sort of questions. An evidence fusion procedure is proposed based on the hybrid DSm model to compensate for a lack of research on the entire information procedure of DSm theory. This paper analyzes the evidence fusion procedure, as well as correlative node input and output information. Key steps and detailed procedures of evidence fusion are also discussed. Finally, an experiment illustrates the efficiency of the proposed evidence fusion procedure. Dezert-Smarandache(DSm) theory, a new information fusion theory, is widely applied in image processing, multiple targets tracking identification, and other areas for its excellent processing ability of imperfect information. However, earlier research on DSm theory mainly focused on one sort of questions. An evidence fusion procedure is proposed based on the hybrid DSm model to compensate for a lack of research on the entire information procedure of DSm theory. This paper analyzes the evidence fusion procedure, as well as correlative node input and output information. Key steps and detailed procedures of evidence fusion are also discussed. Finally, an experiment illustrates the efficiency of the proposed evidence fusion procedure.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2014年第6期959-967,共9页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China(61102168) the Military Innovation Foundation(X11QN106)
关键词 DSM模型 证据 混合 信息融合 图像处理 跟踪识别 信息过程 输出信息 Dezert-Smarandache(DSm) theory,evidence fusion procedure,hybrid DSm model,information fusion
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