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Affine Invariance in Continuous-Domain Convolutional Neural Networks

13 November 2023
A. Mohaddes
Johannes Lederer
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Abstract

The notion of group invariance helps neural networks in recognizing patterns and features under geometric transformations. Group convolutional neural networks enhance traditional convolutional neural networks by incorporating group-based geometric structures into their design. This research studies affine invariance on continuous-domain convolutional neural networks. Despite other research considering isometric invariance or similarity invariance, we focus on the full structure of affine transforms generated by the group of all invertible 2×22 \times 22×2 real matrices (generalized linear group GL2(R)\mathrm{GL}_2(\mathbb{R})GL2​(R)). We introduce a new criterion to assess the invariance of two signals under affine transformations. The input image is embedded into the affine Lie group G2=R2⋉GL2(R)G_2 = \mathbb{R}^2 \ltimes \mathrm{GL}_2(\mathbb{R})G2​=R2⋉GL2​(R) to facilitate group convolution operations that respect affine invariance. Then, we analyze the convolution of embedded signals over G2G_2G2​. In sum, our research could eventually extend the scope of geometrical transformations that usual deep-learning pipelines can handle.

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@article{mohaddes2025_2311.09245,
  title={ Affine Invariance in Continuous-Domain Convolutional Neural Networks },
  author={ Ali Mohaddes and Johannes Lederer },
  journal={arXiv preprint arXiv:2311.09245},
  year={ 2025 }
}
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