Agricultural Fields Segmentation on Satellite Images Using Convolutional Neural Networks

Agricultural fields segmentation algorithms in satellite images are presented. Three convolutional neural networks were developed: U-Net with ResNet-34 and SE-ResNeXt-50 backbones and Deeplabv3+ with Xception backbone. All backbones were pretrained in Imagenet database. Training and testing of algorithms was carried out on NVIDIA DGX-I supercomputer using a dataset of high-resolution images from the Sentine1-2 satellite. The value of F1 and Dice were 0.706 and 0.942 for U-Net with SE-ResNeXt-50 backbone. Test results confirm high accuracy in determining the boundaries of agricultural fields by proposed algorithm. © 2021 IEEE.

Authors
Larionov R.1 , Kotov N.1 , Priorov A.1 , Semenov A. 2
Publisher
Institute of Electrical and Electronics Engineers Inc.
Language
English
Status
Published
Year
2021
Organizations
  • 1 P.G. Demidov Yaroslavl State University, Yaroslavl, Russian Federation
  • 2 People's Friendship University of Russia, Moscow, Russian Federation
Keywords
convolutional neural networks; deep learning; image segmentation; satellite images; Sentinel-2
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