Online Multi Camera-IMU Calibration

Jacob Hartzer, S. Saripalli
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引用次数: 1

Abstract

Visual-inertial navigation systems are powerful in their ability to accurately estimate localization of mobile systems within complex environments that preclude the use of global navigation satellite systems. However, these navigation systems are reliant on accurate and up-to-date temporospatial calibrations of the sensors being used. As such, online estimators for these parameters are useful in resilient systems. This paper presents an extension to existing Kalman Filter based frameworks for estimating and calibrating the extrinsic parameters of multi-camera IMU systems. In addition to extending the filter framework to include multiple camera sensors, the measurement model was reformulated to make use of measurement data that is typically made available in fiducial detection software. A secondary filter layer was used to estimate time translation parameters without closed-loop feedback of sensor data. Experimental calibration results, including the use of cameras with non-overlapping fields of view, were used to validate the stability and accuracy of the filter formulation when compared to offline methods. Finally the generalized filter code has been open-sourced and is available online.
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在线多相机- imu校准
视觉惯性导航系统具有强大的能力,可以在复杂的环境中准确估计移动系统的定位,从而无法使用全球导航卫星系统。然而,这些导航系统依赖于所使用的传感器的精确和最新的时空校准。因此,这些参数的在线估计器在弹性系统中是有用的。本文对现有的基于卡尔曼滤波的多相机IMU系统外部参数估计和标定框架进行了扩展。除了将滤波器框架扩展到包括多个相机传感器之外,测量模型被重新制定,以利用通常在基准检测软件中提供的测量数据。在不需要传感器数据闭环反馈的情况下,利用二次滤波层估计时间平移参数。实验校准结果,包括使用无重叠视场的相机,与离线方法相比,验证了滤波器配方的稳定性和准确性。最后,广义滤波器代码已经开源,并可在线获取。
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