4.5 Article

DIMNet: Dense implicit function network for 3D human body reconstruction

Journal

COMPUTERS & GRAPHICS-UK
Volume 98, Issue -, Pages 1-10

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.cag.2021.04.035

Keywords

Virtual reality; Human body reconstruction; Deep learning; Implicit function

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This paper proposes a method based on deep learning models to reconstruct high-precision 3D human body models from monocular images, using Stacked Hourglass network and Multi-Layer Perceptrons. By optimizing important joint points of the human body using a dense sampling strategy, the high-precision 3D reconstruction is achieved.
In recent years, with the improvement of artificial intelligence technology, it has become possible to re -construct high-precision 3D human body models based on ordinary RGB images. The current 3D human body reconstruction technology requires complex external equipment to scan all angles of the human body, which is complicated to be implemented and cannot be popularized. In order to solve this problem, this paper applies deep learning models on reconstructing 3D human body based on monocular images. First of all, this paper uses Stacked Hourglass network to perform convolution operations on monocular images collected from different views. Then Multi-Layer Perceptrons (MLPs) are used to decode the en-coded high-level images. The feature codes in the two views(main and side) are fused, and the interior and exterior points are classified by the fusion features, so as to obtain the corresponding 3D occupancy field. At last, the Marching Cube algorithm is used for 3D reconstruction with a specific threshold and then we use Laplace smoothing algorithm to remove artifacts. This paper proposes a dense sampling strategy based on the important joint points of the human body, which has a certain optimization ef-fect on the realization of high-precision 3D reconstruction. The performance of the proposed scheme has been validated on the open source datasets, MGN dataset and the THuman dataset, provided by Tsinghua University. The proposed scheme can reconstruct features such as clothing folds, color textures, and facial details,and has great potential to be applied in different applications. (c) 2021 Elsevier Ltd. All rights reserved.

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