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Convex optimization approach to the fusion of identity information,

机译:融合身份信息的凸优化方法,

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Abstract: We consider the problem of identity fusion for a multi- sensor target tracking system whereby sensors generate reports on the target identities. Since the sensor reports are typically fuzzy, 'incomplete' and inconsistent, the fusion approach based on the minimization of inconsistencies between the sensor reports by using a convex Quadratic Programming (QP) and linear programming (LP) formulation. In contrast to the Dempster-Shafer's evidential reasoning approach which suffers from exponentially growing completely, our approach is highly efficient. Moreover, our approach is capable of fusing 'ratio type' sensor reports, thus it is more general than the evidential reasoning theory. When the sensor reports are consistent, the solution generated by the new fusion method can be shown to converge to the true probability distribution. Simulation work shows that our method generates reasonable fusion results, and when only 'Subset type' sensor reports are presented, it produces fusion results similar to that obtained via the evidential reasoning theory. !8
机译:摘要:我们考虑了多传感器目标跟踪系统的身份融合问题,由此传感器在目标身份上生成报告。由于传感器报告通常是模糊的,“不完整”和不一致的,所以通过使用凸二次编程(QP)和线性编程(LP)制定来基于传感器报告之间不一致的融合方法。与Dempster-Shafer的证据推理方法形成鲜明对比,这是完全呈指数增长的,我们的方法是高效的。此外,我们的方法能够融合“比率类型”传感器报告,因此它比是证据推理理论更广泛。当传感器报告一致时,可以显示新融合方法生成的解决方案可以收敛到真正的概率分布。仿真工作表明,我们的方法产生合理的融合结果,并且当呈现“子集”传感器报告时,它产生与通过证据推理理论获得的融合结果。 !8

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