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Multi-Sensor SLAM with Online Self-Calibration and Change Detection

机译:具有在线自校准和变更检测的多传感器SLAM

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We present a solution for constant-time self-calibration and change detection of multiple sensor intrinsic and extrinsic calibration parameters without any prior knowledge of the initial system state or the need of a calibration target or special initialization sequence. This system is capable of continuously self-calibrating multiple sensors in an online setting, while seamlessly solving the online SLAM problem in real-time. We focus on the camera-IMU extrinsic calibration, essential for accurate long-term vision-aided inertial navigation. An initialization strategy and method for continuously estimating and detecting changes to the maximum likelihood camera-IMU transform are presented. A conditioning approach is used, avoiding problems associated with early linearization. Experimental data is presented to evaluate the proposed system and compare it with artifact-based offline calibration developed by our group.
机译:我们提出了一种解决方案,用于恒定时间自校准和改变多种传感器内在和外在校准参数的检测,而无需任何先验的系统状态或需要校准目标或特殊初始化序列的知识。该系统能够在在线设置中连续自校准多个传感器,同时实时无缝地解决在线流动问题。我们专注于Camera-IMU外在校准,对于精确的长期视觉辅助惯性导航至关重要。介绍了初始化策略和方法,用于持续估计和检测最大似然摄像机-IMU变换的变换。使用调理方法,避免与早期线性化相关的问题。提出了实验数据以评估所提出的系统,并将其与我们组开发的基于工件的离线校准进行比较。

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