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ToF camera ego-motion estimation

机译:I ToF相机运动估计

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摘要

In this paper, three approaches for ego-motion estimation using Time-of-Flight (ToF) camera data are evaluated. Ego-motion is defined as a process of estimating a camera's pose relative to some initial pose using the camera's image sequence. The ToF camera is characterised with a number error models. These models are used to design several filters that are applied on point cloud data. Iterative Closest Point (ICP) is applied on the consecutive range images of the ToF camera to estimate relative pose transform which is used for ego-motion estimation. We implemented two variants of ICP namely point-to-point and point-to-plane. A feature based ego-motion approach that detects and tracks features on the amplitude images and use their corresponding 3D points to estimate the relative transformation is implemented. These approaches are evaluated using the ground truth provided by the vicon system.
机译:在本文中,评估了使用飞行时间(ToF)相机数据进行自我运动估计的三种方法。自我运动被定义为使用照相机的图像序列来估计照相机相对于某个初始姿势的姿势的过程。 ToF摄像机具有许多错误模型。这些模型用于设计应用于点云数据的多个过滤器。迭代最近点(ICP)应用于ToF摄像机的连续范围图像上,以估计用于自我运动估计的相对姿势变换。我们实现了ICP的两个变体,即点对点和点对平面。实现了一种基于特征的自我运动方法,该方法可以检测和跟踪振幅图像上的特征,并使用它们的相应3D点来估计相对变换。这些方法使用vicon系统提供的基本事实进行评估。

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