iKalibr-RGBD:通过连续时间速度估计对 RGBD 进行部分专用的无目标视觉惯性时空校准

Shuolong Chen, Xingxing Li, Shengyu Li, Yuxuan Zhou
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引用次数: 0

摘要

视觉惯性系统在过去二十年中得到了广泛的研究和应用,这主要归功于其低成本、低功耗、小体积和高可用性。这种趋势同时导致了大量视觉惯性校准方法的出现,因为传感器之间精确的时空参数是视觉惯性融合的先决条件。在我们之前的工作(即 iKalibr)中,提出了一种基于连续时间的视觉惯性校准方法,作为一次性多传感器弹性时空校准的一部分。虽然不需要人工目标会带来相当大的便利,但在初始化和批量优化过程中需要进行计算成本高昂的姿态估计,从而限制了其可用性。幸运的是,通过采用无映射自我速度估计而不是基于映射的姿态估计,可以极大地改进具有额外深度信息的 RGBD。在本文中,我们介绍了基于连续时间自我速度估计的 RGBD 惯性时空校准,称为 iKalibr-RGBD,它也是无目标的,但计算效率很高。iKalibr-RGBD 的一般流程继承自 iKalibr,由严格的初始化程序和若干连续时间批量优化组成。iKalibr-RGBD 的实现已开源(https://github.com/Unsigned-Long/iKalibr),以造福研究界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
iKalibr-RGBD: Partially-Specialized Target-Free Visual-Inertial Spatiotemporal Calibration For RGBDs via Continuous-Time Velocity Estimation
Visual-inertial systems have been widely studied and applied in the last two decades, mainly due to their low cost and power consumption, small footprint, and high availability. Such a trend simultaneously leads to a large amount of visual-inertial calibration methods being presented, as accurate spatiotemporal parameters between sensors are a prerequisite for visual-inertial fusion. In our previous work, i.e., iKalibr, a continuous-time-based visual-inertial calibration method was proposed as a part of one-shot multi-sensor resilient spatiotemporal calibration. While requiring no artificial target brings considerable convenience, computationally expensive pose estimation is demanded in initialization and batch optimization, limiting its availability. Fortunately, this could be vastly improved for the RGBDs with additional depth information, by employing mapping-free ego-velocity estimation instead of mapping-based pose estimation. In this paper, we present the continuous-time ego-velocity estimation-based RGBD-inertial spatiotemporal calibration, termed as iKalibr-RGBD, which is also targetless but computationally efficient. The general pipeline of iKalibr-RGBD is inherited from iKalibr, composed of a rigorous initialization procedure and several continuous-time batch optimizations. The implementation of iKalibr-RGBD is open-sourced at (https://github.com/Unsigned-Long/iKalibr) to benefit the research community.
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