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3D CNN based Partial 3D Shape Retrieval Focusing on Local Features

机译:基于3D CNN的局部局部3D形状检索

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In this paper, we propose a new method for 3D CNN based partial 3D shape retrieval focusing on local features. A 3D partial shape in our approach is defined by a collection of points on the visible surface projected on the view-screen, during the rendering of a given 3D shape. We construct a voxel from the partial 3D points after extracting the local feature vectors and subsequent dimensional reduction by PCA (Principla Component Analysis) and feeding the reduced feature vectors to 3D CNN. This is a unique approach in contrast to the traditional approach to 3D CNN where the voxels have their values either Os or 1s (i.e. binary voxels). We conducted experiments with a SHREC2016 partial 3D dataset. Our proposed approach outperformed the VoxNet. We also compared our proposed method with other previous methods for partial 3D shape search.
机译:在本文中,我们提出了一种基于局部特征的基于3D CNN的部分3D形状检索的新方法。在我们的方法中,3D部分形状是通过在渲染给定3D形状期间在视图屏幕上投影的可见表面上的点的集合来定义的。在提取局部特征向量并随后通过PCA(原理分量分析)进行尺寸缩减并将缩减的特征向量馈入3D CNN之后,我们从部分3D点构造体素。与传统的3D CNN方法不同,传统方法是3D CNN,其体素的值为Os或1s(即二进制体素)。我们使用SHREC2016部分3D数据集进行了实验。我们提出的方法优于VoxNet。我们还将我们提出的方法与其他先前的方法进行了部分3D形状搜索。

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