Building detection on aerial images using U-NET neural networks

This article presents research results of two convolutional neural networks for building detection on satellite images of Planet database. To analyze the quality of developed algorithms, there was used Sorensen-Dice coefficient of similarity which compares results of algorithms with tagged masks. The masks were generated from json files and sliced on smaller parts together with respective images before the training of algorithms. This approach allows to cope with the problem of segmentation for aerial high-resolution images efficiently and effectively. The problem of building detection on satellite images can be put into practice for urban planning, building control, etc. © 2019 FRUCT.

Authors
Ivanovsky L.1 , Khryashchev V.1 , Pavlov V.1 , Ostrovskaya A. 2
Publisher
IEEE Computer Society
Language
English
Pages
116-122
Status
Published
Number
8711930
Volume
2019-April
Year
2019
Organizations
  • 1 P.G. Demidov Yaroslavl State University, Yaroslavl, Russian Federation
  • 2 People's Friendship University of Russia, RUDN University, Moscow, Russian Federation
Keywords
Antennas; Neural networks; Satellites; Aerial images; Building controls; Building detection; Convolutional neural network; Dice coefficient; High resolution image; Research results; Satellite images; Image segmentation
Date of creation
19.07.2019
Date of change
19.07.2019
Short link
https://repository.rudn.ru/en/records/article/record/38637/
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