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Multi-view Depth Estimation using Epipolar Spatio-Temporal Networks

About

We present a novel method for multi-view depth estimation from a single video, which is a critical task in various applications, such as perception, reconstruction and robot navigation. Although previous learning-based methods have demonstrated compelling results, most works estimate depth maps of individual video frames independently, without taking into consideration the strong geometric and temporal coherence among the frames. Moreover, current state-of-the-art (SOTA) models mostly adopt a fully 3D convolution network for cost regularization and therefore require high computational cost, thus limiting their deployment in real-world applications. Our method achieves temporally coherent depth estimation results by using a novel Epipolar Spatio-Temporal (EST) transformer to explicitly associate geometric and temporal correlation with multiple estimated depth maps. Furthermore, to reduce the computational cost, inspired by recent Mixture-of-Experts models, we design a compact hybrid network consisting of a 2D context-aware network and a 3D matching network which learn 2D context information and 3D disparity cues separately. Extensive experiments demonstrate that our method achieves higher accuracy in depth estimation and significant speedup than the SOTA methods.

Xiaoxiao Long, Lingjie Liu, Wei Li, Christian Theobalt, Wenping Wang• 2020

Related benchmarks

TaskDatasetResultRank
Depth EstimationScanNet (test)
Abs Rel0.0805
65
Multi-view Depth EstimationScanNet (test)
Abs Rel0.0812
23
Depth Estimation7-Scenes (test)
Abs Rel0.1465
19
Multi-view Depth EstimationScanNet 16 (test)
Abs Rel Error0.0812
12
3D Geometry ReconstructionScanNet V2 (val)
Completeness17.4
7
3D Plane SegmentationScanNet (test)
VOI4.47
7
3D Plane SegmentationScanNet Atlas (val)
VOI4.47
4
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