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Depth Super-Resolution from Explicit and Implicit High-Frequency Features

16 March 2023
Xin Qiao
Chenyang Ge
Youming Zhang
Yanhui Zhou
Fabio Tosi
Matteo Poggi
S. Mattoccia
    SupR
    MDE
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Abstract

We propose a novel multi-stage depth super-resolution network, which progressively reconstructs high-resolution depth maps from explicit and implicit high-frequency features. The former are extracted by an efficient transformer processing both local and global contexts, while the latter are obtained by projecting color images into the frequency domain. Both are combined together with depth features by means of a fusion strategy within a multi-stage and multi-scale framework. Experiments on the main benchmarks, such as NYUv2, Middlebury, DIML and RGBDD, show that our approach outperforms existing methods by a large margin (~20% on NYUv2 and DIML against the contemporary work DADA, with 16x upsampling), establishing a new state-of-the-art in the guided depth super-resolution task.

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