CVGRFeb 11, 2025

Pippo: High-Resolution Multi-View Humans from a Single Image

arXiv:2502.07785v120 citationsh-index: 13CVPR
Originality Highly original
AI Analysis

This addresses the challenge of creating detailed 3D-consistent human representations from casual photos for applications in graphics and AI, representing a strong specific gain rather than a foundational breakthrough.

The paper tackles the problem of generating high-resolution multi-view human images from a single input photo, achieving 1K resolution turnaround videos without needing additional inputs like parametric models or camera parameters, and outperforms existing works on multi-view human generation.

We present Pippo, a generative model capable of producing 1K resolution dense turnaround videos of a person from a single casually clicked photo. Pippo is a multi-view diffusion transformer and does not require any additional inputs - e.g., a fitted parametric model or camera parameters of the input image. We pre-train Pippo on 3B human images without captions, and conduct multi-view mid-training and post-training on studio captured humans. During mid-training, to quickly absorb the studio dataset, we denoise several (up to 48) views at low-resolution, and encode target cameras coarsely using a shallow MLP. During post-training, we denoise fewer views at high-resolution and use pixel-aligned controls (e.g., Spatial anchor and Plucker rays) to enable 3D consistent generations. At inference, we propose an attention biasing technique that allows Pippo to simultaneously generate greater than 5 times as many views as seen during training. Finally, we also introduce an improved metric to evaluate 3D consistency of multi-view generations, and show that Pippo outperforms existing works on multi-view human generation from a single image.

Foundations

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