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A novel integrated scheme for extracting superquadric-based geons from 3D data

机译:一种从3D数据中提取基于超二次元的Geons的新颖集成方案

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We develop a processing scheme of volumetric primitives recognition for 3D recognition system based on Recognition by Components (RBC) theory, which integrates the advantages of deformable superquadric models reconstruction and support vector machines (SVMs) multiclass classification for extracting superquadric-based geon description directly from the shape information of 3D data. First, superquadric fitting of 3D data with real-coded genetic algorithm (RCGA) is performed for reconstructing the superquadric description of volumetric primitives; second, a novel sophisticated feature set is derived from the superquadric parameters for SVM-based classification; then, directed acyclic graph support vector machines (DAGSVM) trained by Sequential Minimal Optimization (SMO) algorithm is utilized for recognizing geon classes. Experimental results obtained show that our method is efficient and precise for superquadric-based geons extraction from real shape data in 3D object recognition.
机译:我们开发了一种基于组件识别(RBC)理论的3D识别系统的体积原始识别处理方案,该方案融合了可变形超二次模型重建和支持向量机(SVM)多类分类的优点,可直接从中提取基于超二次元的地质描述3D数据的形状信息。首先,使用实编码遗传算法(RCGA)对3D数据进行超二次拟合,以重建体积图元的超二次描述。其次,从超二次参数派生出新颖的复杂特征集,用于基于SVM的分类。然后,利用序列最小优化(SMO)算法训练的有向无环图支持向量机(DAGSVM)来识别geon类。获得的实验结果表明,我们的方法对于在3D对象识别中从真实形状数据中提取基于超二次元的地质体是有效且精确的。

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