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RECON: Robust symmetry discovery via Explicit Canonical Orientation Normalization

Main:10 Pages
18 Figures
Bibliography:5 Pages
5 Tables
Appendix:18 Pages
Abstract

Real world data often exhibits unknown, instance-specific symmetries that rarely exactly match a transformation group GG fixed a priori. Class-pose decompositions aim to create disentangled representations by factoring inputs into invariant features and a pose gGg\in G defined relative to a training-dependent, arbitrary canonical representation. We introduce RECON, a class-pose agnostic canonical orientation normalization\textit{canonical orientation normalization} that corrects arbitrary canonicals via a simple right-multiplication, yielding natural\textit{natural}, data-aligned canonicalizations. This enables (i) unsupervised discovery of instance-specific symmetry distributions, (ii) detection of out-of-distribution poses, and (iii) test-time canonicalization, granting group invariance to pre-trained models without retraining and irrespective of model architecture, improving downstream performance. We demonstrate results on 2D image benchmarks and --for the first time-- extend symmetry discovery to 3D groups.

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