CVFeb 10

Quantum Multiple Rotation Averaging

arXiv:2602.10115v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses a fundamental optimization problem for 3D vision and robotics researchers, but it is incremental due to current hardware limitations and small-scale applicability.

The paper tackles the multiple rotation averaging problem in 3D vision and robotics by introducing IQARS, a quantum annealing-based algorithm that achieves approximately 12% higher accuracy than the best classical method on synthetic and real-world datasets.

Multiple rotation averaging (MRA) is a fundamental optimization problem in 3D vision and robotics that aims to recover globally consistent absolute rotations from noisy relative measurements. Established classical methods, such as L1-IRLS and Shonan, face limitations including local minima susceptibility and reliance on convex relaxations that fail to preserve the exact manifold geometry, leading to reduced accuracy in high-noise scenarios. We introduce IQARS (Iterative Quantum Annealing for Rotation Synchronization), the first algorithm that reformulates MRA as a sequence of local quadratic non-convex sub-problems executable on quantum annealers after binarization, to leverage inherent hardware advantages. IQARS removes convex relaxation dependence and better preserves non-Euclidean rotation manifold geometry while leveraging quantum tunneling and parallelism for efficient solution space exploration. We evaluate IQARS's performance on synthetic and real-world datasets. While current annealers remain in their nascent phase and only support solving problems of limited scale with constrained performance, we observed that IQARS on D-Wave annealers can already achieve ca. 12% higher accuracy than Shonan, i.e., the best-performing classical method evaluated empirically.

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