Neural-Singular-Hessian: Implicit Neural Representation of Unoriented Point Clouds by Enforcing Singular Hessian

Zixiong Wang, Yunxiao Zhang, Rui Xu, Fan Zhang, Peng Wang, Shuangmin Chen, Shiqing Xin, Wenping Wang, Changhe Tu
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Abstract

Neural implicit representation is a promising approach for reconstructing surfaces from point clouds. Existing methods combine various regularization terms, such as the Eikonal and Laplacian energy terms, to enforce the learned neural function to possess the properties of a Signed Distance Function (SDF). However, inferring the actual topology and geometry of the underlying surface from poor-quality unoriented point clouds remains challenging. In accordance with Differential Geometry, the Hessian of the SDF is singular for points within the differential thin-shell space surrounding the surface. Our approach enforces the Hessian of the neural implicit function to have a zero determinant for points near the surface. This technique aligns the gradients for a near-surface point and its on-surface projection point, producing a rough but faithful shape within just a few iterations. By annealing the weight of the singular-Hessian term, our approach ultimately produces a high-fidelity reconstruction result. Extensive experimental results demonstrate that our approach effectively suppresses ghost geometry and recovers details from unoriented point clouds with better expressiveness than existing fitting-based methods.
神经-奇异-海相:通过强制奇异海相对无定向点云进行隐式神经表示
神经隐式表示是一种很有前途的从点云重建曲面的方法。现有的方法结合了各种正则化项,如 Eikonal 和 Laplacian 能量项,以强制学习的神经函数具有符号距离函数 (SDF) 的特性。然而,从质量较差的未定向点云中推断底层表面的实际拓扑结构和几何形状仍是一项挑战。根据微分几何学,SDF 的 Hessian 对于表面周围微分薄壳空间内的点是奇异的。我们的方法强制神经隐函数的 Hessian 对表面附近的点具有零行列式。这种技术能使近表面点的梯度与表面投影点的梯度保持一致,从而在几次迭代中就能得到一个粗糙但忠实的形状。通过对奇异海相项的权重进行退火处理,我们的方法最终产生了高保真的重建结果。广泛的实验结果表明,与现有的基于拟合的方法相比,我们的方法能有效抑制鬼影几何,并从无方向的点云中恢复细节,具有更好的表现力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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