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Multimodal Data Fusion in Sensor Networks via Copula Processes

机译:通过Copula流程实现传感器网络中的多峰数据融合

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摘要

We develop an efficient data fusion algorithm for field reconstruction of multiple physical phenomena, which exhibit multiple modalities each with complex dependence behavior. In particular, we design a novel spatial model where multiple latent processes are modelled as Multi-Output Gaussian Process. We encode a linear dependency structure through a specified covariance function in both space and between different modalities of the spatial processes monitored. To account for different data modalities, we model the spatial dependence between each process via Copula dependence structures [1], thus allowing to choose any marginal distribution or process (possibly different) for each of the physical phenomena. We formulate the field reconstruction problem and develop a low complexity algorithm to approximate the intractable predictive posterior distribution. We show that our model significantly outperforms the model which treats the different physical phenomena independently in terms of prediction meansquared-errors (MSE). This provides the motivation to use our model for multimodal data fusion.
机译:我们开发了一种用于多种物理现象的现场重构的有效数据融合算法,该算法表现出多种具有复杂依赖性行为的模态。特别是,我们设计了一个新颖的空间模型,其中将多个潜在过程建模为多输出高斯过程。我们通过指定的协方差函数在空间中以及在所监视的空间过程的不同模态之间对线性依赖性结构进行编码。为了说明不同的数据模式,我们通过Copula依赖结构[1]对每个过程之间的空间依赖进行建模,从而允许为每种物理现象选择任何边际分布或过程(可能不同)。我们提出了场重构问题,并开发了一种低复杂度的算法来近似难处理的预测后验分布。我们表明,我们的模型明显优于预测均方误差(MSE)方面独立对待不同物理现象的模型。这提供了将我们的模型用于多模式数据融合的动机。

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