MPDS: A Movie Posters Dataset for Image Generation with Diffusion Model
Meng Xu (1), Tong Zhang (1), Fuyun Wang (1), Yi Lei (1), Xin Liu (2),, Zhen Cui (1) ((1) Nanjing University of Science, Technology, Nanjing,, China., (2) SeetaCloud, Nanjing, China.)

TL;DR
This paper introduces MPDS, a large, specialized dataset for training diffusion models to generate personalized movie posters with detailed descriptions and actor images, aiming to improve poster design automation.
Contribution
We present MPDS, the first dedicated movie poster dataset with 373k+ image-text pairs and actor images, enabling targeted training of diffusion models for poster generation.
Findings
MPDS significantly improves poster generation quality.
Personalized posters with actor images are effectively produced.
The dataset accelerates research in automated poster design.
Abstract
Movie posters are vital for captivating audiences, conveying themes, and driving market competition in the film industry. While traditional designs are laborious, intelligent generation technology offers efficiency gains and design enhancements. Despite exciting progress in image generation, current models often fall short in producing satisfactory poster results. The primary issue lies in the absence of specialized poster datasets for targeted model training. In this work, we propose a Movie Posters DataSet (MPDS), tailored for text-to-image generation models to revolutionize poster production. As dedicated to posters, MPDS stands out as the first image-text pair dataset to our knowledge, composing of 373k+ image-text pairs and 8k+ actor images (covering 4k+ actors). Detailed poster descriptions, such as movie titles, genres, casts, and synopses, are meticulously organized and…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Image Retrieval and Classification Techniques · Multimodal Machine Learning Applications
MethodsDiffusion
