COSMU: Complete 3D human shape from monocular unconstrained images
- URL: http://arxiv.org/abs/2407.10586v1
- Date: Mon, 15 Jul 2024 10:06:59 GMT
- Title: COSMU: Complete 3D human shape from monocular unconstrained images
- Authors: Marco Pesavento, Marco Volino, Adrian Hilton,
- Abstract summary: We present a novel framework to reconstruct complete 3D human shapes from a given target image by leveraging monocular unconstrained images.
The objective of this work is to reproduce high-quality details in regions of the reconstructed human body that are not visible in the input target.
- Score: 24.08612483445495
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a novel framework to reconstruct complete 3D human shapes from a given target image by leveraging monocular unconstrained images. The objective of this work is to reproduce high-quality details in regions of the reconstructed human body that are not visible in the input target. The proposed methodology addresses the limitations of existing approaches for reconstructing 3D human shapes from a single image, which cannot reproduce shape details in occluded body regions. The missing information of the monocular input can be recovered by using multiple views captured from multiple cameras. However, multi-view reconstruction methods necessitate accurately calibrated and registered images, which can be challenging to obtain in real-world scenarios. Given a target RGB image and a collection of multiple uncalibrated and unregistered images of the same individual, acquired using a single camera, we propose a novel framework to generate complete 3D human shapes. We introduce a novel module to generate 2D multi-view normal maps of the person registered with the target input image. The module consists of body part-based reference selection and body part-based registration. The generated 2D normal maps are then processed by a multi-view attention-based neural implicit model that estimates an implicit representation of the 3D shape, ensuring the reproduction of details in both observed and occluded regions. Extensive experiments demonstrate that the proposed approach estimates higher quality details in the non-visible regions of the 3D clothed human shapes compared to related methods, without using parametric models.
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