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A graph optimization approach for motion estimation using inertial measurement unit data

机译:惯性测量单元数据的运动估计图优化方法

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This study presents a novel approach for processing motion data from a six-degree-of-freedom inertial measurement unit (IMU). Trajectory estimation through double integration of acceleration measurements results in the generation and accumulation of multiple errors. Existing IMU-based measurement methods often use constrained initial and final states to resolve these errors. The constraints on the initial and final states lead to a uniform distribution of the accumulated errors throughout the calculated trajectory so that they cancel each other. We develop a generalized method that can incorporate the constraints from the measurements of intermediate states. The proposed approach is inspired by graph-based simultaneous localization and mapping processes from robotics research. We tested the proposed method with simulated and actual IMU data and found that our method estimates trajectories more accurately than conventional methods with acceptably higher computational costs.
机译:本研究提出了一种用于处理来自六维自由度惯性测量单元(IMU)的运动数据的新方法。 通过加速度测量的双重集成轨迹估计导致多误差的产生和累积。 现有的基于IMU的测量方法通常使用受限的初始和最终状态来解决这些错误。 初始和最终状态的约束导致在整个计算的轨迹中累积误差的均匀分布,以便它们互相抵消。 我们开发一种广义方法,可以将限制纳入中间状态的测量。 所提出的方法是由基于图的同时定位和机器人研究的映射过程的启发。 我们测试了模拟和实际IMU数据的提出方法,发现我们的方法比传统方法更准确地估计轨迹,具有可接受的计算成本。

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