FALQON-MST: A Fully Quantum Framework for Graph Optimization in Vision Systems
Guilherme E. L. Pexe, Lucas A. M. Rattighieri, Leandro A. Passos, Douglas Rodrigues, Danilo S. Jodas, Jo\~ao P. Papa, Kelton A. P. da Costa

TL;DR
This paper introduces a fully quantum approach using the FALQON algorithm to compute minimum spanning trees in graphs, demonstrating potential advantages for vision systems with initial promising results on synthetic data.
Contribution
It presents a novel quantum pipeline for MST computation in graphs, employing FALQON with multi-drive and time rescaling strategies, tailored for computer vision applications.
Findings
Multi-drive FALQON improves ground-state probability of MST.
TR-FALQON with multi-drive yields faster convergence and lower energy.
Method shows promise but requires further scaling and hardware validation.
Abstract
Finding the minimum spanning tree (MST) of a graph is an important task in computer vision, as it enables a sparse and low-cost representation of connectivity among elements (such as superpixels, points, or regions), which is useful for tasks such as segmentation, reconstruction, and clustering. In this work, we propose and evaluate a fully quantum pipeline for computing MSTs using the FALQON algorithm, a feedback-based quantum optimization method that does not require classical optimizers. We construct a Hamiltonian formulation whose ground-state energy encodes the MST of a graph and compare different FALQON strategies: (i) time rescaling (TR-FALQON) and (ii) multi-driver configurations. To avoid domain-specific biases, we adopt graphs with random weights and show that the FALQON variants exhibit significant differences in ground-state fidelity. We discuss the relevance of this…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Graph Theory and Algorithms · Advanced Graph Neural Networks
