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New methods for surface reconstruction from range images.

机译:从距离图像重建表面的新方法。

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The digitization and reconstruction of 3D shapes has numerous applications in areas that include manufacturing, virtual simulation, science, medicine, and consumer marketing. In this thesis, we address the problem of acquiring accurate range data through optical triangulation, and we present a method for reconstructing surfaces from sets of data known as range images.; The standard methods for extracting range data from optical triangulation scanners are accurate only for planar objects of uniform reflectance. Using these methods, curved surfaces, discontinuous surfaces, and surfaces of varying reflectance cause systematic distortions of the range data. We present a new ranging method based on analysis of the time evolution of the structured light reflections. Using this spacetime analysis, we can correct for each of these artifacts, thereby attaining significantly higher accuracy using existing technology. When using coherent illumination such as lasers, however, we show that laser speckle places a fundamental limit on accuracy for both traditional and spacetime triangulation.; The range data acquired by 3D digitizers such as optical triangulation scanners commonly consists of depths sampled on a regular grid, a sample set known as a range image. 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 and distortions. Prior algorithms possess subsets of these properties. In this thesis, we present an efficient volumetric method for merging range images that possesses all of these properties. Using this method, we are able to merge a large number of range images (as many as 70) yielding seamless, high-detail models of up to 2.6 million triangles.
机译:3D形状的数字化和重建在制造,虚拟仿真,科学,医学和消费者营销等领域具有众多应用。在本文中,我们解决了通过光学三角测量获取准确距离数据的问题,并提出了一种从称为距离图像的数据集重构曲面的方法。从光学三角测量扫描仪提取距离数据的标准方法仅对具有均匀反射率的平面物体是准确的。使用这些方法,曲面,不连续表面和反射率变化的表面会导致距离数据的系统失真。我们提出了一种新的测距方法,该方法基于对结构化光反射的时间演变的分析。使用这种时空分析,我们可以对每个伪像进行校正,从而使用现有技术获得更高的准确性。但是,当使用相干照明(例如激光)时,我们表明,激光散斑对传统三角测量和时空三角测量的准确性都产生了根本性的限制。由3D数字化仪(例如光学三角测量扫描仪)获取的距离数据通常由在规则网格上采样的深度组成,该采样集称为距离图像。已经开发出许多技术,用于通过整合对准范围的图像组来重建表面。此类算法的一组理想属性包括:增量更新,方向不确定性的表示,在重建中填补空白的能力以及在存在异常值和失真的情况下的鲁棒性。先前的算法拥有这些属性的子集。在本文中,我们提出了一种有效的体积方法,用于合并具有所有这些属性的距离图像。使用这种方法,我们能够合并大量的距离图像(多达70个),从而生成多达260万个三角形的无缝,高细节模型。

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