Reg-NF: Efficient Registration of Implicit Surfaces within Neural Fields

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.09722
Stephen Hausler, David Hall, Sutharsan Mahendren, Peyman Moghadam
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Abstract

Neural fields, coordinate-based neural networks, have recently gained popularity for implicitly representing a scene. In contrast to classical methods that are based on explicit representations such as point clouds, neural fields provide a continuous scene representation able to represent 3D geometry and appearance in a way which is compact and ideal for robotics applications. However, limited prior methods have investigated registering multiple neural fields by directly utilising these continuous implicit representations. In this paper, we present Reg-NF, a neural fields-based registration that optimises for the relative 6-DoF transformation between two arbitrary neural fields, even if those two fields have different scale factors. Key components of Reg-NF include a bidirectional registration loss, multi-view surface sampling, and utilisation of volumetric signed distance functions (SDFs). We showcase our approach on a new neural field dataset for evaluating registration problems. We provide an exhaustive set of experiments and ablation studies to identify the performance of our approach, while also discussing limitations to provide future direction to the research community on open challenges in utilizing neural fields in unconstrained environments.
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Reg-NF:神经场内隐含曲面的高效注册
神经场是一种基于坐标的神经网络,最近在隐式表示场景方面大受欢迎。与基于显式表示(如点云)的传统方法相比,神经场提供了一种连续的场景表示,能够以一种紧凑的方式表示三维几何和外观,是机器人应用的理想选择。然而,此前通过直接利用这些连续的隐式表示来研究多个神经场注册的方法非常有限。在本文中,我们介绍了 Reg-NF,这是一种基于神经场的配准方法,可优化两个任意神经场之间的相对 6-DoF 变换,即使这两个神经场具有不同的比例因子。Reg-NF 的关键组成部分包括双向配准损失、多视角表面采样和利用体积符号距离函数 (SDF)。我们在一个用于评估配准问题的新神经场数据集上展示了我们的方法。我们提供了一套详尽的实验和消融研究,以确定我们方法的性能,同时还讨论了局限性,为研究界在无约束环境中利用神经场的公开挑战提供了未来方向。
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