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Speeding Up Iterative Closest Point Using Stochastic Gradient Descent

机译:使用随机梯度下降加速迭代最近点

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Sensors producing 3D point clouds such as 3D laser scanners and RGB-D cameras are widely used in robotics, be it for autonomous driving or manipulation. Aligning point clouds produced by these sensors is a vital component in such applications to perform tasks such as model registration, pose estimation, and SLAM. Iterative closest point (ICP) is the most widely used method for this task, due to its simplicity and efficiency. In this paper we propose a novel method which solves the optimisation problem posed by ICP using stochastic gradient descent (SGD). Using SGD allows us to improve the convergence speed of ICP without sacrificing solution quality. Experiments using Kinect as well as Velodyne data show that, our proposed method is faster than existing methods, while obtaining solutions comparable to standard ICP. An additional benefit is robustness to parameters when processing data from different sensors.
机译:产生3D点云的传感器(例如3D激光扫描仪和RGB-D相机)广泛用于机器人技术,无论是用于自动驾驶还是操纵。这些传感器产生的对准点云是此类应用中执行诸如模型配准,姿势估计和SLAM之类的任务的重要组成部分。迭代最近点(ICP)由于其简单性和效率而被广泛用于此任务。在本文中,我们提出了一种新颖的方法,该方法解决了使用随机梯度下降(SGD)的ICP带来的优化问题。使用SGD使我们能够在不牺牲解决方案质量的情况下提高ICP的收敛速度。使用Kinect以及Velodyne数据进行的实验表明,我们提出的方法比现有方法更快,同时获得了与标准ICP相当的解决方案。另一个好处是处理来自不同传感器的数据时参数的鲁棒性。

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