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Papers/Multi-view Convolutional Neural Networks for 3D Shape Reco...

Multi-view Convolutional Neural Networks for 3D Shape Recognition

Hang Su, Subhransu Maji, Evangelos Kalogerakis, Erik Learned-Miller

2015-05-05ICCV 2015 123D Shape Recognition3D Point Cloud Classification
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Abstract

A longstanding question in computer vision concerns the representation of 3D shapes for recognition: should 3D shapes be represented with descriptors operating on their native 3D formats, such as voxel grid or polygon mesh, or can they be effectively represented with view-based descriptors? We address this question in the context of learning to recognize 3D shapes from a collection of their rendered views on 2D images. We first present a standard CNN architecture trained to recognize the shapes' rendered views independently of each other, and show that a 3D shape can be recognized even from a single view at an accuracy far higher than using state-of-the-art 3D shape descriptors. Recognition rates further increase when multiple views of the shapes are provided. In addition, we present a novel CNN architecture that combines information from multiple views of a 3D shape into a single and compact shape descriptor offering even better recognition performance. The same architecture can be applied to accurately recognize human hand-drawn sketches of shapes. We conclude that a collection of 2D views can be highly informative for 3D shape recognition and is amenable to emerging CNN architectures and their derivatives.

Results

TaskDatasetMetricValueModel
Shape Representation Of 3D Point CloudsModelNet40Overall Accuracy90.1MVCNN
3D Point Cloud ClassificationModelNet40Overall Accuracy90.1MVCNN
3D Point Cloud ReconstructionModelNet40Overall Accuracy90.1MVCNN

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