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Main Authors: Cong, Xiaoyan, Yang, Haitao, Chen, Liyan, Zhang, Kaifeng, Yi, Li, Bajaj, Chandrajit, Huang, Qixing
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.10167
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author Cong, Xiaoyan
Yang, Haitao
Chen, Liyan
Zhang, Kaifeng
Yi, Li
Bajaj, Chandrajit
Huang, Qixing
author_facet Cong, Xiaoyan
Yang, Haitao
Chen, Liyan
Zhang, Kaifeng
Yi, Li
Bajaj, Chandrajit
Huang, Qixing
contents This paper presents a novel approach 4DRecons that takes a single camera RGB-D sequence of a dynamic subject as input and outputs a complete textured deforming 3D model over time. 4DRecons encodes the output as a 4D neural implicit surface and presents an optimization procedure that combines a data term and two regularization terms. The data term fits the 4D implicit surface to the input partial observations. We address fundamental challenges in fitting a complete implicit surface to partial observations. The first regularization term enforces that the deformation among adjacent frames is as rigid as possible (ARAP). To this end, we introduce a novel approach to compute correspondences between adjacent textured implicit surfaces, which are used to define the ARAP regularization term. The second regularization term enforces that the topology of the underlying object remains fixed over time. This regularization is critical for avoiding self-intersections that are typical in implicit-based reconstructions. We have evaluated the performance of 4DRecons on a variety of datasets. Experimental results show that 4DRecons can handle large deformations and complex inter-part interactions and outperform state-of-the-art approaches considerably.
format Preprint
id arxiv_https___arxiv_org_abs_2406_10167
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle 4DRecons: 4D Neural Implicit Deformable Objects Reconstruction from a single RGB-D Camera with Geometrical and Topological Regularizations
Cong, Xiaoyan
Yang, Haitao
Chen, Liyan
Zhang, Kaifeng
Yi, Li
Bajaj, Chandrajit
Huang, Qixing
Computer Vision and Pattern Recognition
This paper presents a novel approach 4DRecons that takes a single camera RGB-D sequence of a dynamic subject as input and outputs a complete textured deforming 3D model over time. 4DRecons encodes the output as a 4D neural implicit surface and presents an optimization procedure that combines a data term and two regularization terms. The data term fits the 4D implicit surface to the input partial observations. We address fundamental challenges in fitting a complete implicit surface to partial observations. The first regularization term enforces that the deformation among adjacent frames is as rigid as possible (ARAP). To this end, we introduce a novel approach to compute correspondences between adjacent textured implicit surfaces, which are used to define the ARAP regularization term. The second regularization term enforces that the topology of the underlying object remains fixed over time. This regularization is critical for avoiding self-intersections that are typical in implicit-based reconstructions. We have evaluated the performance of 4DRecons on a variety of datasets. Experimental results show that 4DRecons can handle large deformations and complex inter-part interactions and outperform state-of-the-art approaches considerably.
title 4DRecons: 4D Neural Implicit Deformable Objects Reconstruction from a single RGB-D Camera with Geometrical and Topological Regularizations
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.10167