This paper introduces a novel deep framework for dense 3D reconstruction from multiple image frames, leveraging a sparse set of depth measurements gathered jointly with image acquisition. Given a deep multi-view stereo network, our framework uses sparse depth hints to guide the neural network by modulating the plane-sweep cost volume built during the forward step, enabling us to infer constantly much more accurate depth maps. Moreover, since multiple viewpoints can provide additional depth measurements, we propose a multi-view guidance strategy that increases the density of the sparse points used to guide the network, thus leading to even more accurate results. We evaluate our Multi-View Guided framework within a variety of state-of-the-art deep multi-view stereo networks, demonstrating its effectiveness at improving the results achieved by each of them on BlendedMVG and DTU datasets.
翻译:本文介绍了从多个图像框进行密度3D重建的新深层框架,利用与图像获取共同收集的少量深度测量数据。 在深厚的多视图立体网络中,我们的框架使用稀有深度提示来引导神经网络,对前一步所建的平面扫描成本量进行调控,从而使我们能够不断推导出更准确得多的深度地图。 此外,由于多重观点可以提供更多的深度测量数据,我们提出了一个多视角指导战略,提高用于指导网络的稀少点的密度,从而得出更准确的结果。 我们在一个最先进的多视角立体网络中评估了我们的多视角指导框架,并展示了它对于改进每一个在BlendiveMVG和DTU数据集上取得的成果的有效性。