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Papers/Ultraman: Single Image 3D Human Reconstruction with Ultra ...

Ultraman: Single Image 3D Human Reconstruction with Ultra Speed and Detail

Mingjin Chen, JunHao Chen, Xiaojun Ye, Huan-ang Gao, Xiaoxue Chen, Zhaoxin Fan, Hao Zhao

2024-03-18Lifelike 3D Human Generation
PaperPDFCode(official)

Abstract

3D human body reconstruction has been a challenge in the field of computer vision. Previous methods are often time-consuming and difficult to capture the detailed appearance of the human body. In this paper, we propose a new method called \emph{Ultraman} for fast reconstruction of textured 3D human models from a single image. Compared to existing techniques, \emph{Ultraman} greatly improves the reconstruction speed and accuracy while preserving high-quality texture details. We present a set of new frameworks for human reconstruction consisting of three parts, geometric reconstruction, texture generation and texture mapping. Firstly, a mesh reconstruction framework is used, which accurately extracts 3D human shapes from a single image. At the same time, we propose a method to generate a multi-view consistent image of the human body based on a single image. This is finally combined with a novel texture mapping method to optimize texture details and ensure color consistency during reconstruction. Through extensive experiments and evaluations, we demonstrate the superior performance of \emph{Ultraman} on various standard datasets. In addition, \emph{Ultraman} outperforms state-of-the-art methods in terms of human rendering quality and speed. Upon acceptance of the article, we will make the code and data publicly available.

Results

TaskDatasetMetricValueModel
Lifelike 3D Human GenerationTHuman2.0 DatasetCLIP Similarity0.9131Ultraman
Lifelike 3D Human GenerationTHuman2.0 DatasetLPIPS0.1338Ultraman
Lifelike 3D Human GenerationTHuman2.0 DatasetPSNR17.4877Ultraman
Lifelike 3D Human GenerationTHuman2.0 DatasetSSIM0.8958Ultraman

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