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Combination of classifiers with incomplete frames of discernment
作者姓名:Zhunga LIU  Jingfei DUAN  Linqing HUANG  Jean DEZERT  Yongqiang ZHAO
作者单位:1. School of Automation, Northwestern Polytechnical University
基金项目:partially supported by National Natural Science Foundation of China (Nos. U20B2067, 61790552, 61790554);
摘    要:The methods for combining multiple classifiers based on belief functions require to work with a common and complete(closed) Frame of Discernment(Fo D) on which the belief functions are defined before making their combination. This theoretical requirement is however difficult to satisfy in practice because some abnormal(or unknown) objects that do not belong to any predefined class of the Fo D can appear in real classification applications. The classifiers learnt using different attributes inform...

收稿时间:28 January 2021

Combination of classifiers with incomplete frames of discernment
Zhunga LIU,Jingfei DUAN,Linqing HUANG,Jean DEZERT,Yongqiang ZHAO.Combination of classifiers with incomplete frames of discernment[J].Chinese Journal of Aeronautics,2022,35(5):145-157.
Institution:1. School of Automation, Northwestern Polytechnical University, Xi’an 710072, China;2. ONERA – The French Aerospace Lab, Palaiseau 91761, France
Abstract:The methods for combining multiple classifiers based on belief functions require to work with a common and complete (closed) Frame of Discernment (FoD) on which the belief functions are defined before making their combination. This theoretical requirement is however difficult to satisfy in practice because some abnormal (or unknown) objects that do not belong to any pre-defined class of the FoD can appear in real classification applications. The classifiers learnt using different attributes information can provide complementary knowledge which is very useful for making the classification but they are usually based on different FoDs. In order to clearly identify the specific class of the abnormal objects, we propose a new method for combination of classifiers working with incomplete frames of discernment, named CCIF for short. This is a progressive detection method that select and add the detected abnormal objects to the training data set. Because one pattern can be considered as an abnormal object by one classifier and be committed to a specific class by another one, a weighted evidence combination method is proposed to fuse the classification results of multiple classifiers. This new method offers the advantage to make a refined classification of abnormal objects, and to improve the classification accuracy thanks to the complementarity of the classifiers. Some experimental results are given to validate the effectiveness of the proposed method using real data sets.
Keywords:Abnormal object  Belief functions  Classifier fusion  Evidence theory  Detection
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