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TGNet: Learning 3D Shape from Sparse and Incomplete Point Cloud | IEEE Conference Publication | IEEE Xplore

TGNet: Learning 3D Shape from Sparse and Incomplete Point Cloud


Abstract:

Learning accurate 3D shapes from sparse and incomplete point clouds is challenging and meaningful, on account that the point clouds with low resolution always lack repres...Show More

Abstract:

Learning accurate 3D shapes from sparse and incomplete point clouds is challenging and meaningful, on account that the point clouds with low resolution always lack representative and informative details. This paper presents a novel deep auto-encoder called TGNet, which is formulated based on a tree-based generative adversarial network (GAN), to address self-supervised learning tasks on the point cloud with low sparsity. On the encoder side, we employ a PointNet-based framework to intensively capture the global representations. To better infer the spatial information in latent space, we propose a spectral graph learning module in with due consideration to graph topology. Further, we present a new loss that combines Wasserstein metric and multi-resolution Chamfer distance to better estimate global 3D geometry and structural details. The proposed TGNet achieves state-of-the-art performance for various point cloud learning tasks. Qualitative and quantitative evaluations demonstrate the novelty of the proposed model.
Date of Conference: 12-14 May 2023
Date Added to IEEE Xplore: 07 July 2023
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Conference Location: Xianyang, China

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