A volumetric method for building complex models from range images

B. Curless, M. Levoy
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引用次数: 3280

Abstract

A number of techniques have been developed for reconstructing surfaces by integrating groups of aligned range images. A desirable set of properties for such algorithms includes: incremental updating, representation of directional uncertainty, the ability to fill gaps in the reconstruction, and robustness in the presence of outliers. Prior algorithms possess subsets of these properties. In this paper, we present a volumetric method for integrating range images that possesses all of these properties. Our volumetric representation consists of a cumulative weighted signed distance function. Working with one range image at a time, we first scan-convert it to a distance function, then combine this with the data already acquired using a simple additive scheme. To achieve space efficiency, we employ a run-length encoding of the volume. To achieve time efficiency, we resample the range image to align with the voxel grid and traverse the range and voxel scanlines synchronously. We generate the final manifold by extracting an isosurface from the volumetric grid. We show that under certain assumptions, this isosurface is optimal in the least squares sense. To fill gaps in the model, we tessellate over the boundaries between regions seen to be empty and regions never observed. Using this method, we are able to integrate a large number of range images (as many as 70) yielding seamless, high-detail models of up to 2.6 million triangles.
一种基于距离图像构建复杂模型的体积方法
已经开发了许多技术,通过整合对齐的距离图像组来重建表面。这种算法的一组理想属性包括:增量更新,方向不确定性的表示,填补重建空白的能力,以及在异常值存在时的鲁棒性。先前的算法具有这些属性的子集。在本文中,我们提出了一种体积方法来整合具有所有这些属性的距离图像。我们的体积表示由累积加权带符号距离函数组成。每次处理一张距离图像,我们首先将其扫描转换为距离函数,然后使用简单的加性方案将其与已经获得的数据结合起来。为了实现空间效率,我们采用了卷的运行长度编码。为了提高时间效率,我们对距离图像进行重新采样,使其与体素网格对齐,并同步遍历距离和体素扫描线。我们通过从体积网格中提取等值面来生成最终的流形。在一定的假设条件下,该等值面在最小二乘意义上是最优的。为了填补模型中的空白,我们在空白区域和从未观察到的区域之间的边界上进行了镶嵌。使用这种方法,我们能够整合大量的距离图像(多达70张),产生多达260万个三角形的无缝、高细节模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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