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3D Geometric Scale Variability in Range Images: Features and Descriptors

机译:范围图像中的3D几何比例可变性:特征和描述符

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Despite their ubiquitous presence, little has been investigated about the scale variability—the relative variations in the spatial extents of local structures—of 3D geometric data. In this paper we present a comprehensive framework for exploiting this 3D geometric scale variability in range images that provides rich information for characterizing the overall geometry. We derive a sound scale-space representation, which we refer to as the geometric scale-space, that faithfully encodes the scale variability of the surface geometry, and derive novel detectors to extract prominent features and identify their natural scales. The result is a hierarchical set of features of different scales which we refer to as scale-dependent geometric features. We then derive novel local shape descriptors that represent the surface structures that give rise to those features by carving out and encoding the local surface that fall within the support regions of the features. This leads to scale-dependent or scale-invariant local shape descriptors that convey significant discriminative information of the object geometry. We demonstrate the effectiveness of geometric scale analysis on range images, and show that it enables novel applications, in particular, fully automatic registration of multiple objects from a mixed set of range images and 3D object recognition in highly cluttered range image scenes.
机译:尽管它们无处不在,但对于3D几何数据的尺度可变性(局部结构的空间范围的相对变化)的研究很少。在本文中,我们提供了一个用于在距离图像中利用此3D几何比例可变性的综合框架,该框架可提供丰富的信息来表征整体几何形状。我们得出了一个声音的尺度空间表示形式,我们将其称为几何尺度空间,它忠实地编码了表面几何体的尺度可变性,并得出了新颖的检测器以提取突出的特征并识别其自然尺度。结果是不同比例的特征的层次结构集,我们称其为依赖于比例的几何特征。然后,我们导出新颖的局部形状描述符,这些描述符通过刻出并编码落入特征支撑区域内的局部表面来表示产生这些特征的表面结构。这导致了比例尺相关或比例​​尺不变的局部形状描述符,这些描述符传达了对象几何的重要判别信息。我们演示了对距离图像进行几何比例分析的有效性,并表明它可以实现新颖的应用程序,尤其是在高度混乱的距离图像场景中,从混合的距离图像集和3D对象识别中全自动注册多个对象。

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