CHRIS: Clothed Human Reconstruction with Side View Consistency

Liu, Dong, Yang, Yifan, Huang, Zixiong, Gao, Yuxin, Tan, Mingkui

arXiv.org Artificial Intelligence 

--Creating a realistic clothed human from a single-view RGB image is crucial for applications like mixed reality and filmmaking. Despite some progress in recent years, mainstream methods often fail to fully utilize side-view information, as the input single-view image contains front-view information only. This leads to globally unrealistic topology and local surface inconsistency in side views. T o address these, we introduce Clothed Human Reconstruction with Side View Consistency, namely CHRIS, which consists of 1) A Side-View Normal Discriminator that enhances global visual reasonability by distinguishing the generated side-view normals from the ground truth ones; 2) A Multi-to-One Gradient Computation (M2O) that ensures local surface consistency. M2O calculates the gradient of a sampling point by integrating the gradients of the nearby points, effectively acting as a smooth operation. Experimental results demonstrate that CHRIS achieves state-of-the-art performance on public benchmarks and outperforms the prior work. Creating realistic digital humans with intricate clothing details plays a pivotal role in the field of mixed reality [1] and filmmaking [2].

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