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Vision and IMU Data Fusion: Closed-Form Solutions for Attitude, Speed, Absolute Scale, and Bias Determination

机译:视觉和IMU数据融合:姿态,速度,绝对比例和偏差确定的封闭式解决方案

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This paper investigates the problem of vision and inertial data fusion. A sensor assembling that is constituted by one monocular camera, three orthogonal accelerometers, and three orthogonal gyroscopes is considered. The first paper contribution is the analytical derivation of all the observable modes, i.e., all the physical quantities that can be determined by only using the information in the sensor data that are acquired during a short time interval. Specifically, the observable modes are the speed and attitude (roll and pitch angles), the absolute scale, and the biases that affect the inertial measurements. This holds even in the case when the camera only observes a single point feature. The analytical derivation of the aforementioned observable modes is based on a nonstandard observability analysis, which fully accounts for the system nonlinearities. The second contribution is the analytical derivation of closed-form solutions, which analytically express all the aforementioned observable modes in terms of the visual and inertial measurements that are collected during a very short time interval. This allows the introduction of a very simple and powerful new method that is able to simultaneously estimate all the observable modes with no need for any initialization or a priori knowledge. Both the observability analysis and the derivation of the closed-form solutions are carried out in several different contexts, including the case of biased and unbiased inertial measurements, the case of a single and multiple features, and in the presence and absence of gravity. In addition, in all these contexts, the minimum number of camera images that are necessary for the observability is derived. The performance of the proposed approach is evaluated via extensive Monte Carlo simulations and real experiments.
机译:本文研究视觉和惯性数据融合的问题。考虑由一个单眼相机,三个正交加速度计和三个正交陀螺仪组成的传感器组件。论文的第一项贡献是对所有可观察模式的分析推导,即仅通过使用在短时间间隔内获取的传感器数据中的信息即可确定的所有物理量。具体而言,可观察的模式是速度和姿态(侧倾角和俯仰角),绝对比例以及影响惯性测量的偏差。即使在相机仅观察到单点特征的情况下,也是如此。前述可观察模式的分析推导基于非标准可观察性分析,该分析充分考虑了系统非线性。第二个贡献是闭式解决方案的分析推导,它以非常短的时间间隔内收集的视觉和惯性测量值来分析表示所有上述可观察模式。这允许引入一种非常简单而强大的新方法,该方法无需任何初始化或先验知识即可同时估计所有可观察模式。可观测性分析和闭式解的推导都在几种不同的情况下进行,包括有偏和无偏惯性测量的情况,单个和多个特征的情况以及有无重力的情况。此外,在所有这些情况下,得出了可观察性所需的最少数量的摄像机图像。通过广泛的蒙特卡洛模拟和实际实验评估了所提出方法的性能。

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