Quantum Generative Models for Image Generation: Insights from MNIST and MedMNIST
Journal:
arXiv
Published Date:
Mar 30, 2025
Abstract
Quantum generative models offer a promising new direction in machine learning
by leveraging quantum circuits to enhance data generation capabilities. In this
study, we propose a hybrid quantum-classical image generation framework that
integrates variational quantum circuits into a diffusion-based model. To
improve training dynamics and generation quality, we introduce two novel noise
strategies: intrinsic quantum-generated noise and a tailored noise scheduling
mechanism. Our method is built upon a lightweight U-Net architecture, with the
quantum layer embedded in the bottleneck module to isolate its effect. We
evaluate our model on MNIST and MedMNIST datasets to examine its feasibility
and performance. Notably, our results reveal that under limited data conditions
(fewer than 100 training images), the quantum-enhanced model generates images
with higher perceptual quality and distributional similarity than its classical
counterpart using the same architecture. While the quantum model shows
advantages on grayscale data such as MNIST, its performance is more nuanced on
complex, color-rich datasets like PathMNIST. These findings highlight both the
potential and current limitations of quantum generative models and lay the
groundwork for future developments in low-resource and biomedical image
generation.