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Bayesian Multicategorical Soft Data Fusion for Human–Robot Collaboration

机译:用于人机协作的贝叶斯多类别软数据融合

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This paper considers Bayesian data fusion of conventional robot sensor information with ambiguous human-generated categorical information about continuous world states of interest. First, it is shown that such soft information can be generally modeled via hybrid continuous-to-discrete likelihoods that are based on the softmax function. A new hybrid fusion procedure, called variational Bayesian importance sampling (VBIS), is then introduced to combine the strengths of variational Bayes approximations and fast Monte Carlo methods to produce reliable posterior estimates for Gaussian priors and softmax likelihoods. VBIS is then extended to more general fusion problems that involve complex Gaussian mixture (GM) priors and multimodal softmax likelihoods, leading to accurate GM approximations of highly non-Gaussian fusion posteriors for a wide range of robot sensor data and soft human data. Experiments for hardware-based multitarget search missions with a cooperative human-autonomous robot team show that humans can serve as highly informative sensors through proper data modeling and fusion, and that VBIS provides reliable and scalable Bayesian fusion estimates via GMs.
机译:本文考虑了传统机器人传感器信息的贝叶斯数据融合与人类产生的有关连续世界关注状态的分类信息的融合。首先,示出了这种软信息通常可以基于基于softmax函数的混合连续离散离散似然来建模。然后,引入了一种新的混合融合程序,称为变分贝叶斯重要性抽样(VBIS),以结合变分贝叶斯近似和快速蒙特卡洛方法的优势,为高斯先验和softmax可能性提供可靠的后验估计。然后,VBIS扩展到涉及复杂高斯混合(GM)先验和多模态softmax可能性的更一般的融合问题,从而为各种机器人传感器数据和软人类数据提供了高度非高斯融合后验的精确GM近似值。与人类自主的协作机器人团队合作进行的基于硬件的多目标搜索任务的实验表明,人类可以通过适当的数据建模和融合充当信息丰富的传感器,并且VBIS通过GM提供可靠且可扩展的贝叶斯融合估计。

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