Symmetry Detection

Symmetry detection in computer vision and related fields aims to automatically identify symmetries within data, improving the robustness and efficiency of various machine learning tasks. Current research focuses on developing robust algorithms that handle noisy data and partial symmetries, often employing techniques like Riemannian Langevin dynamics, group equivariant convolutions (including relaxed variants), and contrastive learning within geodesic point cloud patches. These advancements are impacting diverse applications, including object pose estimation, 3D shape analysis, robotic control, and even hardware security through anomaly detection based on symmetry analysis in FPGA circuits.

Papers