A Hybrid Quantum-Classical Algorithm for Robust Fitting
About
Fitting geometric models onto outlier contaminated data is provably intractable. Many computer vision systems rely on random sampling heuristics to solve robust fitting, which do not provide optimality guarantees and error bounds. It is therefore critical to develop novel approaches that can bridge the gap between exact solutions that are costly, and fast heuristics that offer no quality assurances. In this paper, we propose a hybrid quantum-classical algorithm for robust fitting. Our core contribution is a novel robust fitting formulation that solves a sequence of integer programs and terminates with a global solution or an error bound. The combinatorial subproblems are amenable to a quantum annealer, which helps to tighten the bound efficiently. While our usage of quantum computing does not surmount the fundamental intractability of robust fitting, by providing error bounds our algorithm is a practical improvement over randomised heuristics. Moreover, our work represents a concrete application of quantum computing in computer vision. We present results obtained using an actual quantum computer (D-Wave Advantage) and via simulation. Source code: https://github.com/dadung/HQC-robust-fitting
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Fundamental Matrix Estimation | KITTI (104-108) | Consensus Count324 | 13 | |
| Fundamental Matrix Estimation | KITTI (738-742) | Consensus Count493 | 13 | |
| Fundamental Matrix Estimation | KITTI (198-201) | Latency (s)36.15 | 13 | |
| Fundamental Matrix Estimation | Castle | Inlier Count76 | 8 | |
| Fundamental Matrix Estimation | Zoom | |I| Score94 | 8 | |
| Multi-view triangulation | Linkoping point 14 (N = 52) | Inlier Count37 | 8 | |
| Multi-view triangulation | Tower point 132 | Inlier Count (|I|)81 | 8 | |
| Fundamental Matrix Estimation | Valbonne | Inlier Count (|I|)36 | 8 | |
| Multi-view triangulation | Nikolai point 534 N = 20 | Point Count (|I|)16 | 8 | |
| Multi-view triangulation | Nikolai point 134 N = 24 | Inliers21 | 8 |