Data in Brief (Apr 2018)

MCIndoor20000: A fully-labeled image dataset to advance indoor objects detection

  • Fereshteh S. Bashiri,
  • Eric LaRose,
  • Peggy Peissig,
  • Ahmad P. Tafti

Journal volume & issue
Vol. 17
pp. 71 – 75

Abstract

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A fully-labeled image dataset provides a unique resource for reproducible research inquiries and data analyses in several computational fields, such as computer vision, machine learning and deep learning machine intelligence. With the present contribution, a large-scale fully-labeled image dataset is provided, and made publicly and freely available to the research community. The current dataset entitled MCIndoor20000 includes more than 20,000 digital images from three different indoor object categories, including doors, stairs, and hospital signs. To make a comprehensive dataset addressing current challenges that exist in indoor objects modeling, we cover a multiple set of variations in images, such as rotation, intra-class variation plus various noise models. The current dataset is freely and publicly available at https://github.com/bircatmcri/MCIndoor20000. Keywords: Image dataset, Large-scale dataset, Image classification, Supervised learning, Indoor objects, Deep learning