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Triplanar convolution with shared 2D kernels for 3D classification and shape retrieval

机译:具有共享2D内核的Triplanar卷积3D分类和形状检索

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摘要

Increasing the depth of Convolutional Neural Networks (CNNs) has been recognized to provide better generalization performance. However, in the case of 3D CNNs, stacking layers increases the number of learnable parameters linearly, making it more prone to learn redundant features. In this paper, we propose a novel 3D CNN structure that learns shared 2D triplanar features viewed from the three orthogonal planes, which we term S3PNet. Due to the reduced dimension of the convolutions, the proposed S3PNet is able to learn 3D representations with substantially fewer learnable parameters. Experimental evaluations show that the combination of 2D representations on the different orthogonal views learned through the S3PNet is sufficient and effective for 3D representation, with the results outperforming current methods based on fully 3D CNNs. We support this with extensive evaluations on widely used 3D data sources in computer vision: CAD models, LiDAR point clouds, RGB-D images, and 3D Computed Tomography scans. Experiments further demonstrate that S3PNet has better generalization capability for smaller training sets, and leams more of kernels with less redundancy compared to kernels learned from 3D CNNs.
机译:已经认识到增加卷积神经网络的深度(CNNS)以提供更好的泛化性能。然而,在3D CNNS的情况下,堆叠层线性地增加了学习参数的数量,使其更容易学习冗余功能。在本文中,我们提出了一种新颖的3D CNN结构,该结构学习从三个正交平面观看的共享2D Triplanar功能,我们术语S3Pnet。由于卷曲的维度减少,所提出的S3PNet能够学习具有基本上更少的学习参数的3D表示。实验评估表明,通过S3PNET学习的不同正交视图上的2D表示的组合足够且有效地对3D表示,结果超越了基于完全3D CNN的电流方法。我们通过计算机视觉中广泛使用的3D数据源进行了广泛的评估,提供了广泛的评估:CAD模型,LIDAR点云,RGB-D图像和3D计算机断层扫描扫描。实验进一步证明S3PNET对较小训练集具有更好的泛化能力,与从3D CNN中学到的内核相比,更多的内核具有较少的冗余。

著录项

  • 来源
    《Computer vision and image understanding》 |2020年第4期|102901.1-102901.12|共12页
  • 作者单位

    Department of ECE Automation and Systems Research Institute Seoul National University Seoul Republic of Korea;

    Department of ECE Automation and Systems Research Institute Seoul National University Seoul Republic of Korea;

    School of Electronic Engineering Soonchunhyang Univ Chungcheongnam-do Republic of Korea;

    Department of Radiology Seoul National University Bundang Hospital Seongnam Republic of Korea;

    Department of Radiology Seoul National University Bundang Hospital Seongnam Republic of Korea;

    Department of ECE Automation and Systems Research Institute Seoul National University Seoul Republic of Korea;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    3D vision; Medical image; Deep learning; Computer vision;

    机译:3D视觉;医学图像;深度学习;计算机视觉;

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