Litcius/Paper detail

Quantum Hybrid Diffusion Models for Image Synthesis

Francesca De Falco, Andrea Ceschini, Alessandro Sebastianelli, Bertrand Le Saux, Massimo Panella

2024KI - Künstliche Intelligenz10 citationsDOIOpen Access PDF

Abstract

Abstract In this paper, we propose a new methodology to design quantum hybrid diffusion models, derived from classical U-Nets with ResNet and Attention layers. Specifically, we propose two possible different hybridization schemes combining quantum computing’s superior generalization with classical networks’ modularity. In the first one, we acted at the vertex: ResNet convolutional layers are gradually replaced with variational circuits to create Quantum ResNet blocks. In the second proposed architecture, we extend the hybridization to the intermediate level of the encoder, due to its higher sensitivity in the feature extraction process. In order to conduct an in-depth analysis of the potential advantages stemming from the integration of quantum layers, images generated by quantum hybrid diffusion models are compared to those generated by classical models, and evaluated in terms of several quantitative metrics. The results demonstrate an advantage in using hybrid quantum diffusion models, as they generally synthesize better-quality images and converges faster. Moreover, they show the additional advantage of having a lower number of parameters to train compared to the classical one, with a reduction that depends on the extent to which the vertex is hybridized.

Topics & Concepts

Computer scienceQuantumGeneralizationEncoderConvolutional neural networkAlgorithmVertex (graph theory)DiffusionModularity (biology)Theoretical computer scienceTopology (electrical circuits)MathematicsArtificial intelligencePhysicsQuantum mechanicsGraphCombinatoricsMathematical analysisBiologyGeneticsOperating systemImage and Signal Denoising MethodsAdvanced Image Processing TechniquesGenerative Adversarial Networks and Image Synthesis
Quantum Hybrid Diffusion Models for Image Synthesis | Litcius