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Learning Color Equivariant Representations

About

In this paper, we introduce group convolutional neural networks (GCNNs) equivariant to color variation. GCNNs have been designed for a variety of geometric transformations from 2D and 3D rotation groups, to semi-groups such as scale. Despite the improved interpretability, accuracy and generalizability of these architectures, GCNNs have seen limited application in the context of perceptual quantities. Notably, the recent CEConv network uses a GCNN to achieve equivariance to hue transformations by convolving input images with a hue rotated RGB filter. However, this approach leads to invalid RGB values which break equivariance and degrade performance. We resolve these issues with a lifting layer that transforms the input image directly, thereby circumventing the issue of invalid RGB values and improving equivariance error by over three orders of magnitude. Moreover, we extend the notion of color equivariance to include equivariance to saturation and luminance shift. Our hue-, saturation-, luminance- and color-equivariant networks achieve strong generalization to out-of-distribution perceptual variations and improved sample efficiency over conventional architectures. We demonstrate the utility of our approach on synthetic and real world datasets where we consistently outperform competitive baselines.

Yulong Yang, Felix O'Mahony, Christine Allen-Blanchette• 2024

Related benchmarks

TaskDatasetResultRank
Image ClassificationStanford Cars--
635
Image ClassificationCaltech-101--
208
Image ClassificationOxford Pets--
94
Classification3D Shapes A/A (in-distribution)
Classification Error0.00e+0
15
Image ClassificationCamelyon17
Error Rate16.08
11
Image ClassificationCIFAR-100 Luminance Shifted
Error Rate51.34
9
Image ClassificationStanford Cars Saturation Shifted
Classification Error31.16
9
Image ClassificationOxford Pets Saturation Shifted
Classification Error46.92
9
Image ClassificationCIFAR-10 Luminance Shifted
Classification Error25.62
9
Image ClassificationOxford Pets Luminance Shifted
Classification Error64.04
9
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