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Multi-sensor Data Fusion Using the Influence Model

机译:使用影响模型的多传感器数据融合

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摘要

System robustness against individual sensor failures is an important concern in multi-sensor networks. Unfortunately, the complexity of using the remaining sensors to interpolate missing sensor data grows exponentially due to the "curse of dimensionality". In this paper we demonstrate that the influence model, our novel formulation for combining evidence from multiple interactive dynamic processes, can efficiently interpolate missing data and can achieve greater accuracy by modeling the structure of multi-sensor interaction.
机译:对单个传感器故障的系统稳健性是多传感器网络中的重要关注。不幸的是,由于“维度的诅咒”,使用剩余传感器对插值缺失传感器数据的复杂性呈指数增长。在本文中,我们展示了影响来自多个交互式动态过程的证据的影响模型,可以有效地通过建模多传感器交互结构来实现更大的准确性。

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