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Multi-sensor data fusion: An unscented least squares approach

机译:多传感器数据融合:无味最小二乘法

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This manuscript provides an approach to solve the nonlinear least squares problem that arises in decentralized fusion. Even though almost all sensor noise can be modeled as additive noise, the additive nature of the measurement noise is lost when the signal is processed at the sensor node. The proposed approach employs the unscented transformation before the estimation problem at the central node is posed as a nonlinear least squares problem. Numerical simulations indicate that the proposed unscented transformation based approach yields desired results.
机译:该手稿提供了一种解决分散融合中出现的非线性最小二乘问题的方法。即使几乎所有传感器噪声都可以建模为加性噪声,但是当在传感器节点处处理信号时,测量噪声的加性会丢失。在中心节点的估计问题被提出为非线性最小二乘问题之前,所提出的方法采用了无味变换。数值模拟表明,所提出的基于无味变换的方法产生了预期的结果。

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