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arxiv 2212.07378 v2 pith:KGZS3OCN submitted 2022-12-14 cs.CV cs.AI

3DHumanGAN: 3D-Aware Human Image Generation with 3D Pose Mapping

classification cs.CV cs.AI
keywords humanposedhumanganimagesmappingnetworkconsistentd-aware
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present 3DHumanGAN, a 3D-aware generative adversarial network that synthesizes photorealistic images of full-body humans with consistent appearances under different view-angles and body-poses. To tackle the representational and computational challenges in synthesizing the articulated structure of human bodies, we propose a novel generator architecture in which a 2D convolutional backbone is modulated by a 3D pose mapping network. The 3D pose mapping network is formulated as a renderable implicit function conditioned on a posed 3D human mesh. This design has several merits: i) it leverages the strength of 2D GANs to produce high-quality images; ii) it generates consistent images under varying view-angles and poses; iii) the model can incorporate the 3D human prior and enable pose conditioning. Project page: https://3dhumangan.github.io/.

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