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MonoSDF: Exploring Monocular Geometric Cues for Neural Implicit Surface Reconstruction

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In recent years, neural implicit surface reconstruction methods have become popular for multi-view 3D reconstruction. In contrast to traditional multi-view stereo methods, these approaches tend to produce smoother and more complete reconstructions due to the inductive smoothness bias of neural networks. State-of-the-art neural implicit methods allow for high-quality reconstructions of simple scenes from many input views. Yet, their performance drops significantly for larger and more complex scenes and scenes captured from sparse viewpoints. This is caused primarily by the inherent ambiguity in the RGB reconstruction loss that does not provide enough constraints, in particular in less-observed and textureless areas. Motivated by recent advances in the area of monocular geometry prediction, we systematically explore the utility these cues provide for improving neural implicit surface reconstruction. We demonstrate that depth and normal cues, predicted by general-purpose monocular estimators, significantly improve reconstruction quality and optimization time. Further, we analyse and investigate multiple design choices for representing neural implicit surfaces, ranging from monolithic MLP models over single-grid to multi-resolution grid representations. We observe that geometric monocular priors improve performance both for small-scale single-object as well as large-scale multi-object scenes, independent of the choice of representation.

Zehao Yu, Songyou Peng, Michael Niemeyer, Torsten Sattler, Andreas Geiger• 2022

Related benchmarks

TaskDatasetResultRank
3D Geometry ReconstructionScanNet
Accuracy3.5
54
Surface ReconstructionDTU
Scan 24 Metric Value0.66
34
3D ReconstructionDTU
Average Error1.86
32
Surface ReconstructionTanks&Temples
Mean39
27
3D Scene ReconstructionScanNet v2 (test)
Accuracy0.214
26
RenderingReplica and ScanNet++
PSNR26.2
18
Scene ReconstructionReplica and ScanNet++
CD8.94
18
3D Scene ReconstructionReplica
CD3.87
14
3D ReconstructionScanNet
F-score73.3
13
3D Scene ReconstructionScanNet++
CD3.94
11
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