We present a technique for dense 3D reconstruction of objects using an imaging sonar, also known as forward-looking sonar (FLS). Compared to previous methods that model the scene geometry as point clouds or volumetric grids, we represent the geometry as a neural implicit function. Additionally, given such a representation, we use a differentiable volumetric renderer that models the propagation of acoustic waves to synthesize imaging sonar measurements. We perform experiments on real and synthetic datasets and show that our algorithm reconstructs high-fidelity surface geometry from multi-view FLS images at much higher quality than was possible with previous techniques and without suffering from their associated memory overhead.
翻译:我们展示了利用成像声纳(又称前瞻声纳(FLS))对物体进行密集三维重建的技术。与以前模拟场景几何作为点云或体积网格的方法相比,我们把几何作为神经隐含功能。此外,鉴于这种表达方式,我们使用一种不同的体积转换器,模拟声波的传播,以合成声纳成像测量。我们在真实的和合成的数据集上进行实验,并表明我们的算法从多视图FLS图像中以远高于以往技术的更高质量和不受到相关记忆管理影响的方式重建高纤维化地表几何。