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Geometric Algorithms for Sensor Fusion: From Calibration to State Estimation : 센서 퓨전을 위한 기하학적 알고리즘: 캘리브레이션과 상태추정

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Authors

강동훈

Advisor
박종우
Major
공과대학 기계항공공학부
Issue Date
2018-02
Publisher
서울대학교 대학원
Keywords
geometric algorithmsensor fusioncalibrationoptimizationestimation
Description
학위논문 (박사)-- 서울대학교 대학원 : 공과대학 기계항공공학부, 2018. 2. 박종우.
Abstract
In this thesis, we present geometric algorithms for fusing measurements provided by various kinds of motion sensors such as cameras, inertial sensors, encoders, etc. Among many issues related to sensor fusion, we particularly consider the problem of two-frame sensor calibration, and estimation of attitudes and gyro bias.

Firstly, in the two-frame sensor calibration problem, the objective is to find rigid-body homogeneous transformation matrices $X,Y$ that best fit a set of equalities of the form $\mathbf{A}_i \mathbf{X} = \mathbf{Y} \mathbf{B}_i$, $i=1, \ldots, N$, where $\{(\mathbf{A}_i, \mathbf{B}_i)\}$ are two sets of homogeneous transformation matrices obtained from two different sensor measurements. A fast and numerically robust local optimization algorithm for the two-frame sensor calibration objective function is proposed. Using coordinate-invariant differential geometric methods that take into account the matrix Lie group structure of the rigid-body transformations, our local descent method makes use of analytic gradients
and Hessians, and a strictly descending fast step-size estimate to achieve significant performance improvements. Furthermore, we present a two-phase stochastic geometric optimization algorithm for finding a stochastic global minimizer based on our earlier local optimizer. Numerical simulation and real experiments demonstrate that our algorithm is superior to existing unit quaternion-based methods in terms of robustness and efficiency.

Secondly, we consider the problem of estimating attitudes and gyro bias by using inertial and magnetic sensors. To address this issue, we present an intrinsic unscented Kalman filtering (UKF) algorithm, of which novelty can be traced to the design of measurement function. In our formulation, the measurement has the form of $SO(3)$, which is given by the solution to Wahba's problem. Its merit is that the measurement noise covariance can consider the constraint on two direction vectors and is also well-defined with a full rank. Moreover, we present an offline algorithm for determining the parameters in this covariance from measurements of gravity and geomagnetic field by using actual accelerometers and magnetometers.
Synthetic and real experiments show that our algorithm outperforms the existing state-of-the art estimators in terms of both convergence behavior and accuracy.
Language
English
URI
https://hdl.handle.net/10371/140557
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