A Dataset of Flash and Ambient Illumination Pairs from the Crowd
Author(s)
Aksoy, Yagiz; Kim, Changil; Kellnhofer, Petr; Paris, Sylvain; Elgharib, Mohamed; Pollefeys, Marc; Matusik, Wojciech; ... Show more Show less
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Illumination is a critical element of photography and is essential for many computer vision tasks. Flash light is unique in the sense that it is a widely available tool for easily manipulating the scene illumination. We present a dataset of thousands of ambient and flash illumination pairs to enable studying flash photography and other applications that can benefit from having separate illuminations. Different than the typical use of crowdsourcing in generating computer vision datasets, we make use of the crowd to directly take the photographs that make up our dataset. As a result, our dataset covers a wide variety of scenes captured by many casual photographers. We detail the advantages and challenges of our approach to crowdsourcing as well as the computational effort to generate completely separate flash illuminations from the ambient light in an uncontrolled setup. We present a brief examination of illumination decomposition, a challenging and underconstrained problem in flash photography, to demonstrate the use of our dataset in a data-driven approach. Keywords: Flash photography; Dataset collection; Crowdsourcing; Illumination decomposition
Date issued
2018Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
European Conference on Computer Vision
Publisher
Springer International Publishing
Citation
Aksoy, Yagiz et al. "A Dataset of Flash and Ambient Illumination Pairs from the Crowd." European Conference on Computer Vision, September 2018, Munich, Germany, Springer, 2018 © 2018 Springer International Publishing
Version: Author's final manuscript
ISBN
9783030012397
9783030012403
ISSN
0302-9743
1611-3349