Dynamic Spatial Propagation Network for Depth Completion
Image-guided depth completion aims to generate dense depth maps with sparse depth measurements and corresponding RGB images. Currently, spatial propagation networks (SPNs) are the most popular affinity-based methods in depth completion, but they still suffer from the representation limitation of the...
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Zusammenfassung: | Image-guided depth completion aims to generate dense depth maps with sparse
depth measurements and corresponding RGB images. Currently, spatial propagation
networks (SPNs) are the most popular affinity-based methods in depth
completion, but they still suffer from the representation limitation of the
fixed affinity and the over smoothing during iterations. Our solution is to
estimate independent affinity matrices in each SPN iteration, but it is
over-parameterized and heavy calculation. This paper introduces an efficient
model that learns the affinity among neighboring pixels with an
attention-based, dynamic approach. Specifically, the Dynamic Spatial
Propagation Network (DySPN) we proposed makes use of a non-linear propagation
model (NLPM). It decouples the neighborhood into parts regarding to different
distances and recursively generates independent attention maps to refine these
parts into adaptive affinity matrices. Furthermore, we adopt a diffusion
suppression (DS) operation so that the model converges at an early stage to
prevent over-smoothing of dense depth. Finally, in order to decrease the
computational cost required, we also introduce three variations that reduce the
amount of neighbors and attentions needed while still retaining similar
accuracy. In practice, our method requires less iteration to match the
performance of other SPNs and yields better results overall. DySPN outperforms
other state-of-the-art (SoTA) methods on KITTI Depth Completion (DC) evaluation
by the time of submission and is able to yield SoTA performance in NYU Depth v2
dataset as well. |
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DOI: | 10.48550/arxiv.2202.09769 |