MIPS-Fusion: Multi-Implicit-Submaps for Scalable and Robust Online Neural RGB-D Reconstruction

Yijie Tang, Jiazhao Zhang, Zhimiao Yu, He Wang, Kaiyang Xu
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Abstract

We introduce MIPS-Fusion, a robust and scalable online RGB-D reconstruction method based on a novel neural implicit representation - multi-implicit-submap. Different from existing neural RGB-D reconstruction methods lacking either flexibility with a single neural map or scalability due to extra storage of feature grids, we propose a pure neural representation tackling both difficulties with a divide-and-conquer design. In our method, neural submaps are incrementally allocated alongside the scanning trajectory and efficiently learned with local neural bundle adjustments. The submaps can be refined individually in a back-end optimization and optimized jointly to realize submap-level loop closure. Meanwhile, we propose a hybrid tracking approach combining randomized and gradient-based pose optimizations. For the first time, randomized optimization is made possible in neural tracking with several key designs to the learning process, enabling efficient and robust tracking even under fast camera motions. The extensive evaluation demonstrates that our method attains higher reconstruction quality than the state of the arts for large-scale scenes and under fast camera motions.
MIPS-Fusion:用于可扩展的鲁棒在线神经 RGB-D 重构的多隐式子映射
我们介绍了 MIPS-Fusion,这是一种基于新型神经隐式表示--多隐式子映射--的稳健且可扩展的在线 RGB-D 重建方法。与现有的神经 RGB-D 重建方法不同,我们提出了一种纯粹的神经表示法,通过分而治之的设计解决了这两个难题。在我们的方法中,神经子映射随着扫描轨迹逐步分配,并通过局部神经束调整进行有效学习。子映射可在后端优化中单独细化并联合优化,以实现子映射级闭环。同时,我们提出了一种混合跟踪方法,将随机优化和基于梯度的姿势优化相结合。通过对学习过程的几个关键设计,我们首次在神经跟踪中实现了随机优化,即使在相机快速运动的情况下也能实现高效、稳健的跟踪。广泛的评估表明,我们的方法在大规模场景和快速摄像机运动下的重建质量高于现有技术。
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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