YFCC100M: the new data in multimedia research

@article{Thomee2016YFCC100MTN,
  title={YFCC100M: the new data in multimedia research},
  author={Bart Thomee and David A. Shamma and Gerald Friedland and Benjamin Elizalde and Karl Ni and Douglas Poland and Damian Borth and Li-Jia Li},
  journal={Commun. ACM},
  year={2016},
  volume={59},
  pages={64-73}
}
This publicly available curated dataset of almost 100 million photos and videos is free and legal for all. 

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