4.6 Article

A locally-constrained YOLO framework for detecting small and densely-distributed building footprints

出版社

TAYLOR & FRANCIS LTD
DOI: 10.1080/13658816.2019.1624761

关键词

Building detection; deep learning; locally constrained; YOLO; remote sensing

资金

  1. Advanced Research Projects Agency - Energy, U.S. Department of Energy [DE-AR0000795]
  2. U.S. Department of Defense [HM0210-13-1-0005, HM1582-08-1-0017]
  3. U.S. National Science Foundation [1737633, 0940818, 1029711, 1541876, IIS-1218168, IIS-1320580]
  4. U.S. Department of Agriculture [2017-51181-27222]
  5. U.S. National Institute of Health [KL2 TR002492, TL1 TR002493, UL1 TR002494]
  6. OVPR Infrastructure Investment Initiative, University of Minnesota
  7. Minnesota Supercomputing Institute (MSI), University of Minnesota
  8. Div Of Information & Intelligent Systems
  9. Direct For Computer & Info Scie & Enginr [1541876] Funding Source: National Science Foundation

向作者/读者索取更多资源

Building footprints are among the most predominant features in urban areas, and provide valuable information for urban planning, solar energy suitability analysis, etc. We aim to automatically and rapidly identify building footprints by leveraging deep learning techniques and the increased availability of remote sensing datasets at high spatial resolution. The task is computationally challenging due to the use of large training datasets and large number of parameters. In related work, You-Only-Look-Once (YOLO) is a state-of-the-art deep learning framework for object detection. However, YOLO is limited in its capacity to identify small objects that appear in groups, which is the case for building footprints. We propose a LOcally-COnstrained (LOCO) You-Only-Look-Once framework to detect small and densely-distributed building footprints. LOCO is a variant of YOLO. Its layer architecture is determined by the spatial characteristics of building footprints and it uses a constrained regression modeling to improve the robustness of building size predictions. We also present an invariant augmentation based voting scheme to further improve the precision in the prediction phase. Experiments show that LOCO can greatly improve the solution quality of building detection compared to related work.

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