QUANT-PHCVDec 20, 2023

Quantum Annealing for Computer Vision Minimization Problems

arXiv:2312.12848v15 citationsh-index: 10Future generations computer systems
Originality Incremental advance
AI Analysis

This work addresses intractable energy minimization problems in computer vision for researchers and practitioners, offering a potential quantum-assisted alternative to deep learning, though it is incremental as it builds on existing quantum annealing techniques.

The study tackled stereo matching in computer vision by developing a quantum annealing-based inference algorithm for discrete energy minimization problems, comparing results with classical methods using a hybrid quantum-classical solver.

Computer Vision (CV) labelling algorithms play a pivotal role in the domain of low-level vision. For decades, it has been known that these problems can be elegantly formulated as discrete energy minimization problems derived from probabilistic graphical models (such as Markov Random Fields). Despite recent advances in inference algorithms (such as graph-cut and message-passing algorithms), the resulting energy minimization problems are generally viewed as intractable. The emergence of quantum computations, which offer the potential for faster solutions to certain problems than classical methods, has led to an increased interest in utilizing quantum properties to overcome intractable problems. Recently, there has also been a growing interest in Quantum Computer Vision (QCV), with the hope of providing a credible alternative or assistant to deep learning solutions in the field. This study investigates a new Quantum Annealing based inference algorithm for CV discrete energy minimization problems. Our contribution is focused on Stereo Matching as a significant CV labeling problem. As a proof of concept, we also use a hybrid quantum-classical solver provided by D-Wave System to compare our results with the best classical inference algorithms in the literature.

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