基于变维局部形状描述符的模型构建自动配准

B. Taati, M. Bondy, P. Jasiobedzki, M. Greenspan
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引用次数: 13

摘要

提出了一种新的用于三维配准的变维局部形状描述符,并将其应用于距离图像的三维模型构建。描述符基于以高维直方图表示的一大组属性。该方法的新颖之处在于:首先,它为大量的局部形状描述符提供了一个通用的平台;其次,与以前设计的低维度和紧凑尺寸的描述符不同,这些描述符是高维和高度区分的。新方法建议在描述符生成和比较上投入更多,作为回报,在被注册的图像的假设点匹配集中获得更高百分比的内线。这反过来又大大减少了寻找两个图像之间对齐所需的RANSAC迭代次数,正如在3D模型构建应用程序中的实验所证实的那样。研究还表明,正确选择属性可以提高特征对应的有效性,从而增加重叠图像之间可能的获取角度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Registration for Model Building using Variable Dimensional Local Shape Descriptors
A new set of variable dimensional local shape descriptors for 3D registration is proposed and applied to 3D model building from range images. The descriptors are based on a large set of properties represented as high dimensional histograms. The novelty of the method is two fold: first, it offers a generalized platform for a large class of local shape descriptors; second, unlike previously devised descriptors that are of low dimensionality and compact size, these descriptors are high dimensional and highly discriminating. The new approach suggests investing more into descriptor generation and comparison and in return gaining a higher percentage of inliers in the set of hypothesized point matches across the images being registered. This in turn drastically reduces the required number of RANSAC iterations for finding the alignment between two images, as is confirmed by experimentation in a 3D model building application. It is also shown that the correct choice of properties can increase the effectiveness of feature correspondences, thereby increasing the possible acquisition angle between overlapping images.
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