This article describes an algorithm that provides visual odometry estimates from sequential pairs of RGBD images. The key contribution of this article on RGBD odometry is that it provides both an odometry estimate and a covariance for the odometry parameters in real-time via a representative covariance matrix. Accurate, real-time parameter covariance is essential to effectively fuse odometry measurements into most navigation systems. To date, this topic has seen little treatment in research which limits the impact existing RGBD odometry approaches have for localization in these systems. Covariance estimates are obtained via a statistical perturbation approach motivated by real-world models of RGBD sensor measurement noise. Results discuss the accuracy of our RGBD odometry approach with respect to ground truth obtained from a motion capture system and characterizes the suitability of this approach for estimating the true RGBD odometry parameter uncertainty.
翻译:这篇文章描述了一种算法,它提供RGBD相继相对图像的直观几何估计。本条关于RGBDodology的主要贡献是,它通过具有代表性的共变矩阵为实时的odology参数提供了一种odology估计值和共变法。精确、实时参数共变对于将odology测量值有效结合到大多数导航系统至关重要。迄今为止,这一专题在限制现有RGBDododology方法对这些系统本地化的影响的研究中很少得到处理。通过由RGBD传感器噪音真实世界模型驱动的统计扰动方法,得出了变量估计值。结果讨论了我们RGBDodology方法对于从运动捕捉系统获得的地面真理的准确性,并说明了这一方法对于估计真正的RGBDodology参数不确定性的适宜性。