Model-Based Classification of Quadric Surfaces

Newman T.S., Flynn P.J., Jain A.K.
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引用次数: 46

Abstract

Model-based 3D object recognition systems using range imagery typically employ entirely data-driven procedures for segmentation and surface classification. However, some recognition environments may contain only objects whose surface types and parameters are known a priori and can therefore be exploited by the early-processing steps used in the recognition system. We propose a new suite of model-driven techniques for identification of quadric surfaces (cones, cylinders, and spheres) in segmented range imagery. The methods employ surface positions and surface normal estimates in combination with the known parameters of surfaces in a database of object models. Second-derivative quantities (i.e., surface curvatures) are not used. The free parameters of cylinders and spheres are accumulated using a Hough transform, and free parameters of cones are estimated using a regression procedure. Experiments are presented for numerous scenes of both real and synthetic objects including part jumbles, objects in many poses, objects containing concave and convex surfaces, and noiseless and noisy synthetic range images of objects. Our experimental results show that the proposed surface classification methods can accurately recover surface parameters from both synthetic and real images, making them viable for environments with partial knowledge of surface type and parameters.

基于模型的二次曲面分类
使用距离图像的基于模型的3D物体识别系统通常采用完全数据驱动的分割和表面分类程序。然而,一些识别环境可能只包含其表面类型和参数先验已知的对象,因此可以通过识别系统中使用的早期处理步骤加以利用。我们提出了一套新的模型驱动技术,用于识别分割范围图像中的二次曲面(锥体,圆柱体和球体)。该方法结合物体模型数据库中已知的表面参数,采用表面位置和表面法线估计。二阶导数量(即曲面曲率)不使用。利用霍夫变换累积柱体和球体的自由参数,利用回归方法估计锥体的自由参数。本文对真实物体和合成物体的场景进行了实验,包括部分混乱、多种姿态的物体、含有凹面和凸面的物体,以及物体的无噪声和有噪声的合成范围图像。实验结果表明,所提出的表面分类方法可以准确地从合成图像和真实图像中恢复表面参数,使其适用于部分了解表面类型和参数的环境。
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