Unsupervised Dense Deformation Embedding Network for Template-Free Shape Correspondence
Ronghan Chen, Yang Cong, Jiahua Dong

TL;DR
This paper introduces UD^2E-Net, an unsupervised deep learning model that predicts dense shape deformations using local features and an autoencoder, avoiding dense annotations and capturing local details effectively.
Contribution
The paper proposes a novel unsupervised network with an autoencoder and deformation graph for accurate shape correspondence without dense supervision.
Findings
Outperforms state-of-the-art unsupervised methods by 24%.
Surpasses supervised methods by 13% on the Faust Intra challenge.
Effectively captures local geometric details of shapes.
Abstract
Shape correspondence from 3D deformation learning has attracted appealing academy interests recently. Nevertheless, current deep learning based methods require the supervision of dense annotations to learn per-point translations, which severely overparameterize the deformation process. Moreover, they fail to capture local geometric details of original shape via global feature embedding. To address these challenges, we develop a new Unsupervised Dense Deformation Embedding Network (i.e., UD^2E-Net), which learns to predict deformations between non-rigid shapes from dense local features. Since it is non-trivial to match deformation-variant local features for deformation prediction, we develop an Extrinsic-Intrinsic Autoencoder to frst encode extrinsic geometric features from source into intrinsic coordinates in a shared canonical shape, with which the decoder then synthesizes…
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Taxonomy
Topics3D Shape Modeling and Analysis · Human Pose and Action Recognition · Advanced Numerical Analysis Techniques
