2019
DOI: 10.48550/arxiv.1908.00329
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Physical Cue based Depth-Sensing by Color Coding with Deaberration Network

Abstract: Color-coded aperture (CCA) methods can physically measure the depth of a scene given by physical cues from a single-shot image of a monocular camera. However, they are vulnerable to actual lens aberrations in real scenes because they assume an ideal lens for simplifying algorithms. In this paper, we propose physical cue-based deep learning for CCA photography. To address actual lens aberrations, we developed a deep deaberration network (DDN) that is additionally equipped with a self-attention mechanism of posi… Show more

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References 36 publications
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