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Novel moderate transformation of fuzzy membership function into basic belief assignment
Institution:1. School of Automation Science and Engineering, Xi’an Jiaotong University, Xi’an 710049, China;2. ONERA, The French Aerospace Lab, Palaiseau 91761, France;3. SKLSVMS, School of Aerospace, Xi’an Jiaotong University, Xi’an 710049, China
Abstract:In information fusion, the uncertain information from different sources might be modeled with different theoretical frameworks. When one needs to fuse the uncertain information represented by different uncertainty theories, constructing the transformation between different frameworks is crucial. Various transformations of a Fuzzy Membership Function (FMF) into a Basic Belief Assignment (BBA) have been proposed, where the transformations based on uncertainty maximization and minimization can determine the BBA without preselecting the focal elements. However, these two transformations that based on uncertainty optimization emphasize the extreme cases of uncertainty. To avoid extreme attitudinal bias, a trade-off or moderate BBA with the uncertainty degree between the minimal and maximal ones is more preferred. In this paper, two moderate transformations of an FMF into a trade-off BBA are proposed. One is the weighted average based transformation and the other is the optimization-based transformation with weighting mechanism, where the weighting factor can be user-specified or determined with some prior information. The rationality and effectiveness of our transformations are verified through numerical examples and classification examples.
Keywords:Basic belief assignment  Belief functions  Fuzzy membership function  Information fusion  Moderate transformation
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