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A Reliability-Based Multisensor Data Fusion with Application in Target Classification

机译:基于可靠性的多传感器数据融合及其在目标分类中的应用

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摘要

The theory of belief functions has been extensively utilized in many practical applications involving decision making. One such application is the classification of target based on the pieces of information extracted from the individual attributes describing the target. Each piece of information is usually modeled as the basic probability assignment (BPA), also known as the mass function. The determination of the BPA has remained an open problem. Although fuzzy membership functions such as triangular and Gaussian functions have been widely used to model the likelihood estimation function based on the historical data, it has been observed that less emphasis has been placed on the impact of the spread of the membership function on the decision accuracy of the reasoning process. Conflict in the combination of BPAs may arise due to poor characterization of fuzzy membership functions to induce belief mass. In this work, we propose a multisensor data fusion within the framework of belief theory for target classification where shape/spread of the membership function is adjusted during the training/modeling stage to improve on the classification accuracy while removing the need for the computation of the credibility. To further enhance the performance of the proposed method, the reliability factor is deployed not only to effectively manage the possible conflict among participating bodies of evidence for better decision accuracy but also to reduce the number of sources for improved efficiency. The effectiveness of the proposed method was evaluated using both the real-world and the artificial datasets.
机译:信念函数理论已在涉及决策的许多实际应用中得到了广泛利用。一种这样的应用是基于从描述目标的各个属性中提取的多条信息对目标进行分类。通常将每条信息建模为基本概率分配(BPA),也称为质量函数。 BPA的确定仍然是一个未解决的问题。尽管模糊隶属函数(例如三角函数和高斯函数)已被广泛用于基于历史数据对似然估计函数进行建模,但是已经观察到,对隶属函数的扩展对决策准确性的影响的关注较少推理过程。 BPA组合中的冲突可能是由于模糊隶属函数的较差特征引起的信念质量而引起的。在这项工作中,我们在目标分类的信念理论框架内提出了一种多传感器数据融合,其中在训练/建模阶段调整隶属函数的形状/分布以提高分类准确性,同时消除了对分类的计算需求。信誉。为了进一步提高所提出方法的性能,使用可靠性因子不仅可以有效地管理参与证据之间的可能冲突,以获得更好的决策准确性,而且可以减少来源数量,从而提高效率。使用真实世界和人工数据集评估了该方法的有效性。

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