Loss function selection in a problem of satellite image segmentation using convolutional neural network

Results of training a convolutional neural network for the satellite image segmentation are presented. Input images use four channels: Red, Green, Blue and Near-infrared. The convolutional neural network was trained to mark areas containing buildings and facilities. U-Net architecture was used for the task. For learning procedure supercomputer NVIDIA DGX-1 was used. The process of data augmentation is described. Results of training with different loss functions are compared. Network evaluation results for different types of residential areas are presented. © 2019 IEEE.

Authors
Sedov A.G.1 , Khryashchev V.V.1 , Larionov R.V.1 , Ostrovskaya A.A. 2
Publisher
Institute of Electrical and Electronics Engineers Inc.
Language
English
Status
Published
Number
8814279
Year
2019
Organizations
  • 1 P.G. Demidov Yaroslavl State University, Yaroslavl, Russian Federation
  • 2 People's Friendship University of Russia, Moscow, Russian Federation
Keywords
data augmentation; image segmentation; loss function; satellite imagery; U-Net network architecture
Date of creation
24.12.2019
Date of change
24.12.2019
Short link
https://repository.rudn.ru/en/records/article/record/55166/
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