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首页> 外文期刊>Robotics, IEEE Transactions on >RGBD Point Cloud Alignment Using Lucas–Kanade Data Association and Automatic Error Metric Selection
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RGBD Point Cloud Alignment Using Lucas–Kanade Data Association and Automatic Error Metric Selection

机译:使用Lucas-Kanade数据关联和自动误差度量选择的RGBD点云对齐

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摘要

We propose to overcome a significant limitation of the iterative closest point (ICP) algorithm used by KinectFusion, namely, its sole reliance upon geometric information. Our approach uses both geometric and color information in a direct manner that uses all the data in order to accurately estimate camera pose. Data association is performed by Lucas–Kanade to compute an affine warp between the color images associated with two RGBD point clouds. A subsequent step then estimates the Euclidean transformation between the point clouds using either a point-to-point or point-to-plane error metric, with a novel method based on a normal covariance test for automatically selecting between them. Together, Lucas–Kanade data association with covariance testing enables robust camera tracking through areas of low geometric features, without sacrificing accuracy in environments in which the existing ICP technique succeeds. Experimental results on several publicly available datasets demonstrate the improved performance both qualitatively and quantitatively.
机译:我们建议克服KinectFusion使用的迭代最近点(ICP)算法的重大限制,即它仅依赖于几何信息。我们的方法以直接的方式使用几何和颜色信息,并使用所有数据来准确估计相机的姿势。数据关联由Lucas-Kanade执行,以计算与两个RGBD点云关联的彩色图像之间的仿射扭曲。然后,后续步骤使用点到点或点到平面误差度量,使用基于正常协方差检验的新颖方法在点云之间进行自动选择来估计点云之间的欧几里德变换。将Lucas–Kanade数据关联与协方差测试一起使用,可以在低几何特征的区域进行可靠的摄像机跟踪,而不会牺牲现有ICP技术成功的环境中的准确性。在几个公开可用的数据集上的实验结果从质和量上证明了改进的性能。

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