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OPTIMAL ASYNCHRONOUS MULTI-SENSOR REGISTRATION IN 3 DIMENSIONS

机译:3维最佳异步多传感器配准

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The success of multi-sensor data fusion requires an important step called sensor registration, which involves estimating sensor biases from sensors' asynchronous measurements. There are two difficulties in the bias estimation problem: one is the unknown target states which serve as the nuisance variables in the estimation problem, the other is the highly nonlinear coordinate transformation between sensors' local and common coordinate frames. In this work, we focus on the 3-dimensional scenario and propose a new nonlinear least squares (LS) formulation which avoids estimating target states. The proposed LS formulation eliminates the target states by exploiting the nearly-constant velocity property of the target motion. To address the intrinsic nonlinearity, we propose a block coordinate descent (BCD) scheme for solving the formulation which alternately updates various bias estimates. Specifically, semidefinite relaxation technique is introduced to handle the nonlinearity brought by angle biases. Furthermore, two BCD algorithms with different block picking rules are proposed. Finally, the effectiveness and the efficiency of the proposed BCD algorithms are demonstrated in the numerical simulation section.
机译:多传感器数据融合的成功需要一个重要的步骤,即传感器配准,该步骤涉及根据传感器的异步测量估算传感器偏差。偏差估计问题中有两个困难:一个是未知目标状态,它们是估计问题中的麻烦变量,另一个是传感器的局部坐标系和公共坐标系之间的高度非线性坐标转换。在这项工作中,我们专注于3维场景,并提出了一种避免估计目标状态的新的非线性最小二乘(LS)公式。拟议的LS公式通过利用目标运动的几乎恒定的速度特性消除了目标状态。为了解决固有非线性问题,我们提出了一种块坐标下降(BCD)方案来求解可交替更新各种偏差估计值的公式。具体来说,引入半定松弛技术来处理角度偏差带来的非线性。此外,提出了两种具有不同块选取规则的BCD算法。最后,数值仿真部分演示了所提出的BCD算法的有效性和效率。

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