Few-Shot Unsupervised Implicit Neural Shape Representation Learning with Spatial Adversaries

Amine Ouasfi, Adnane Boukhayma
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Abstract

Implicit Neural Representations have gained prominence as a powerful framework for capturing complex data modalities, encompassing a wide range from 3D shapes to images and audio. Within the realm of 3D shape representation, Neural Signed Distance Functions (SDF) have demonstrated remarkable potential in faithfully encoding intricate shape geometry. However, learning SDFs from sparse 3D point clouds in the absence of ground truth supervision remains a very challenging task. While recent methods rely on smoothness priors to regularize the learning, our method introduces a regularization term that leverages adversarial samples around the shape to improve the learned SDFs. Through extensive experiments and evaluations, we illustrate the efficacy of our proposed method, highlighting its capacity to improve SDF learning with respect to baselines and the state-of-the-art using synthetic and real data.
有空间对手的少镜头无监督隐式神经形状表征学习
隐式神经表征作为捕捉复杂数据模式的强大框架,在从三维形状到图像和音频的广泛领域中,已经获得了突出的地位。在三维形状表示领域,神经签名距离函数(SDF)在忠实编码错综复杂的形状几何方面表现出了非凡的潜力。然而,在没有地面实况监督的情况下,从稀疏的三维点云中学习 SDF 仍然是一项极具挑战性的任务。通过广泛的实验和评估,我们证明了所提方法的有效性,并突出强调了该方法相对于基线和最先进方法(使用合成数据和真实数据)在改进 SDF 学习方面的能力。
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