CVOct 15, 2021

PolyNet: Polynomial Neural Network for 3D Shape Recognition with PolyShape Representation

arXiv:2110.07882v122 citations
Originality Incremental advance
AI Analysis

This work addresses a domain-specific problem in 3D shape recognition for computer graphics and geometry processing, offering incremental improvements in handling mesh variations.

The authors tackled the challenge of handling variations in polygon mesh representations for 3D shape recognition by proposing PolyNet with PolyShape representation, achieving superior performance in classification and retrieval tasks compared to existing methods.

3D shape representation and its processing have substantial effects on 3D shape recognition. The polygon mesh as a 3D shape representation has many advantages in computer graphics and geometry processing. However, there are still some challenges for the existing deep neural network (DNN)-based methods on polygon mesh representation, such as handling the variations in the degree and permutations of the vertices and their pairwise distances. To overcome these challenges, we propose a DNN-based method (PolyNet) and a specific polygon mesh representation (PolyShape) with a multi-resolution structure. PolyNet contains two operations; (1) a polynomial convolution (PolyConv) operation with learnable coefficients, which learns continuous distributions as the convolutional filters to share the weights across different vertices, and (2) a polygonal pooling (PolyPool) procedure by utilizing the multi-resolution structure of PolyShape to aggregate the features in a much lower dimension. Our experiments demonstrate the strength and the advantages of PolyNet on both 3D shape classification and retrieval tasks compared to existing polygon mesh-based methods and its superiority in classifying graph representations of images. The code is publicly available from https://myavartanoo.github.io/polynet/.

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