Comparing SDXL and Midjourney v5.1 on PartiPrompts: Which AI Model Wins?

Written by synthesizing | Published 2024/10/03
Tech Story Tags: open-source-ai | latent-diffusion-model | text-to-image-synthesis | stable-diffusion | deep-generative-modeling | sdxl | pixel-space-models | ai-architecture

TLDRA comparison between SDXL and Midjourney v5.1 using the PartiPrompts benchmark shows that SDXL performs better in four out of six categories, with overall user votes favoring SDXL in terms of prompt adherence.via the TL;DR App

Authors:

(1) Dustin Podell, Stability AI, Applied Research;

(2) Zion English, Stability AI, Applied Research;

(3) Kyle Lacey, Stability AI, Applied Research;

(4) Andreas Blattmann, Stability AI, Applied Research;

(5) Tim Dockhorn, Stability AI, Applied Research;

(6) Jonas Müller, Stability AI, Applied Research;

(7) Joe Penna, Stability AI, Applied Research;

(8) Robin Rombach, Stability AI, Applied Research.

Table of Links

Abstract and 1 Introduction

2 Improving Stable Diffusion

2.1 Architecture & Scale

2.2 Micro-Conditioning

2.3 Multi-Aspect Training

2.4 Improved Autoencoder and 2.5 Putting Everything Together

3 Future Work

Appendix

A Acknowledgements

B Limitations

C Diffusion Models

D Comparison to the State of the Art

E Comparison to Midjourney v5.1

F On FID Assessment of Generative Text-Image Foundation Models

G Additional Comparison between Single- and Two-Stage SDXL pipeline

References

D Comparison to the State of the Art

E Comparison to Midjourney v5.1

E.1 Overall Votes

To asses the generation quality of SDXL we perform a user study against the state of the art text-toimage generation platform Midjourney[1]. As the source for image captions we use the PartiPrompts (P2) benchmark [53], that was introduced to compare large text-to-image model on various challenging prompts.

For our study, we choose five random prompts from each category, and generate four 1024 × 1024 images by both Midjourney (v5.1, with a set seed of 2) and SDXL for each prompt. These images were then presented to the AWS GroundTruth taskforce, who voted based on adherence to the prompt. The results of these votes are illustrated in Fig. 9. Overall, there is a slight preferance for SDXL over Midjourney in terms of prompt adherence.

E.2 Category & challenge comparisons on PartiPrompts (P2)

Each prompt from the P2 benchmark is organized into a category and a challenge, each focus on different difficult aspects of the generation process. We show the comparisons for each category (Fig. 10) and challenge (Fig. 11) of P2 below. In four out of six categories SDXL outperforms Midjourney, and in seven out of ten challenges there is no significant difference between both models or SDXL outperforms Midjourney.

This paper is available on arxiv under CC BY 4.0 DEED license.


Written by synthesizing | Synthesizing weaves diverse perspectives into innovative solutions.
Published by HackerNoon on 2024/10/03