论文标题

RIAV-MVS:多视图立体声的反复索引

RIAV-MVS: Recurrent-Indexing an Asymmetric Volume for Multi-View Stereo

论文作者

Cai, Changjiang, Ji, Pan, Yan, Qingan, Xu, Yi

论文摘要

本文提出了一种基于学习的方法,用于从摆姿势的图像中进行多视图深度估计。我们的核心思想是一个“学习到优越”范式,它迭代地索引了扫描平面的成本量,并通过卷积的封闭式复发单元(GRU)回归了深度图。由于成本量在编码多视频几何形状中起着至关重要的作用,因此我们旨在改善其在像素和框架级别的构造。在像素级别上,我们建议通过将变压器块引入参考图像(但不是源图像)来打破暹罗网络(通常在MVS中用于提取图像特征)的对称性。这样的不对称音量使网络可以从参考图像中提取全局特征,以预测其深度图。给定参考图像和源图像之间的姿势的潜在不准确,我们建议将残留姿势网络合并以纠正相对姿势。这本质上可以纠正框架级别的成本量。我们在现实世界中的MVS数据集上进行了广泛的实验,并表明我们的方法在数据库内评估和跨数据集泛化方面都能达到最新的性能。可用代码:https://github.com/oppo-us-research/riav-mvs。

This paper presents a learning-based method for multi-view depth estimation from posed images. Our core idea is a "learning-to-optimize" paradigm that iteratively indexes a plane-sweeping cost volume and regresses the depth map via a convolutional Gated Recurrent Unit (GRU). Since the cost volume plays a paramount role in encoding the multi-view geometry, we aim to improve its construction both at pixel- and frame- levels. At the pixel level, we propose to break the symmetry of the Siamese network (which is typically used in MVS to extract image features) by introducing a transformer block to the reference image (but not to the source images). Such an asymmetric volume allows the network to extract global features from the reference image to predict its depth map. Given potential inaccuracies in the poses between reference and source images, we propose to incorporate a residual pose network to correct the relative poses. This essentially rectifies the cost volume at the frame level. We conduct extensive experiments on real-world MVS datasets and show that our method achieves state-of-the-art performance in terms of both within-dataset evaluation and cross-dataset generalization. Code available: https://github.com/oppo-us-research/riav-mvs.

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