Burst Image Super-Resolution with Base Frame Selection
Burst image super-resolution has been a topic of active research in recent years due to its ability to obtain a high-resolution image by using complementary information between multiple frames in the burst. In this work, we explore using burst shots with non-uniform exposures to confront real-world...
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Zusammenfassung: | Burst image super-resolution has been a topic of active research in recent
years due to its ability to obtain a high-resolution image by using
complementary information between multiple frames in the burst. In this work,
we explore using burst shots with non-uniform exposures to confront real-world
practical scenarios by introducing a new benchmark dataset, dubbed
Non-uniformly Exposed Burst Image (NEBI), that includes the burst frames at
varying exposure times to obtain a broader range of irradiance and motion
characteristics within a scene. As burst shots with non-uniform exposures
exhibit varying levels of degradation, fusing information of the burst shots
into the first frame as a base frame may not result in optimal image quality.
To address this limitation, we propose a Frame Selection Network (FSN) for
non-uniform scenarios. This network seamlessly integrates into existing
super-resolution methods in a plug-and-play manner with low computational
costs. The comparative analysis reveals the effectiveness of the nonuniform
setting for the practical scenario and our FSN on synthetic-/real- NEBI
datasets. |
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DOI: | 10.48550/arxiv.2406.17869 |