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5 months ago

Deep Stereo using Adaptive Thin Volume Representation with Uncertainty Awareness

Shuo Cheng; Zexiang Xu; Shilin Zhu; Zhuwen Li; Li Erran Li; Ravi Ramamoorthi; Hao Su

Deep Stereo using Adaptive Thin Volume Representation with Uncertainty Awareness

Abstract

We present Uncertainty-aware Cascaded Stereo Network (UCS-Net) for 3D reconstruction from multiple RGB images. Multi-view stereo (MVS) aims to reconstruct fine-grained scene geometry from multi-view images. Previous learning-based MVS methods estimate per-view depth using plane sweep volumes with a fixed depth hypothesis at each plane; this generally requires densely sampled planes for desired accuracy, and it is very hard to achieve high-resolution depth. In contrast, we propose adaptive thin volumes (ATVs); in an ATV, the depth hypothesis of each plane is spatially varying, which adapts to the uncertainties of previous per-pixel depth predictions. Our UCS-Net has three stages: the first stage processes a small standard plane sweep volume to predict low-resolution depth; two ATVs are then used in the following stages to refine the depth with higher resolution and higher accuracy. Our ATV consists of only a small number of planes; yet, it efficiently partitions local depth ranges within learned small intervals. In particular, we propose to use variance-based uncertainty estimates to adaptively construct ATVs; this differentiable process introduces reasonable and fine-grained spatial partitioning. Our multi-stage framework progressively subdivides the vast scene space with increasing depth resolution and precision, which enables scene reconstruction with high completeness and accuracy in a coarse-to-fine fashion. We demonstrate that our method achieves superior performance compared with state-of-the-art benchmarks on various challenging datasets.

Code Repositories

touristCheng/UCSNet
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-reconstruction-on-dtuUCSNet
Acc: 0.338
Comp: 0.349
Overall: 0.344
point-clouds-on-tanks-and-templesUCSNet
Mean F1 (Intermediate): 54.83

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Deep Stereo using Adaptive Thin Volume Representation with Uncertainty Awareness | Papers | HyperAI