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A novel 3D vorticity based approach for automatic registration of low resolution range images

机译:一种基于3D涡度的新颖方法,可自动配准低分辨率范围图像

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This paper tackles the problem of feature matching and range image registration. Our approach is based on a novel set of discriminating three-dimensional (3D) local features, named 3D-Vor (Vorticity). In contrast to conventional local feature representation techniques, which use the vector field (i.e. surface normals) to just construct their local reference frames, the proposed feature representation exploits the vorticity of the vector field computed at each point of the local surface to capture the distinctive characteristics at each point of the underlying 3D surface. The 3D-Vor descriptors of two range images are then matched using a fully automatic feature matching algorithm which identifies correspondences between the two range images. Correspondences are verified in a local validation step of the proposed algorithm and used for the pairwise registration of the range images. Quantitative results on low resolution Kinect 3D data (Washington RGB-D dataset) show that our proposed automatic registration algorithm is accurate and computationally efficient. The performance evaluation of the proposed descriptor was also carried out on the challenging low resolution Washington RGB-D (Kinect) object dataset, for the tasks of automatic range image registration. Reported experimental results show that the proposed local surface descriptor is robust to resolution, noise and more accurate than state-of-the-art techniques. It achieves 90% registration accuracy compared to 50%, 69.2% and 52% for spin image, 3D SURF and SISI/LD-SIFT descriptors, respectively. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文解决了特征匹配和距离图像配准的问题。我们的方法基于一套新颖的可区分三维(3D)局部特征的集,称为3D-Vor(涡度)。与使用矢量场(即表面法线)仅构造其局部参考系的常规局部特征表示技术相比,所提出的特征表示利用在局部表面的每个点处计算出的矢量场的涡度来捕获独特的基础3D曲面每个点的特征。然后使用全自动特征匹配算法来匹配两个距离图像的3D-Vor描述符,该算法会识别两个距离图像之间的对应关系。对应关系在提出的算法的本地验证步骤中得到验证,并用于范围图像的成对配准。对低分辨率Kinect 3D数据(华盛顿RGB-D数据集)的定量结果表明,我们提出的自动配准算法准确且计算效率高。还针对具有挑战性的低分辨率华盛顿RGB-D(Kinect)对象数据集进行了拟议描述符的性能评估,以实现自动范围图像配准的任务。报告的实验结果表明,所提出的局部表面描述符对分辨率,噪声具有鲁棒性,并且比最新技术更准确。与自旋图像,3D SURF和SISI / LD-SIFT描述符分别为50%,69.2%和52%相比,它可实现90%的套准精度。 (C)2015 Elsevier Ltd.保留所有权利。

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