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Published December 1, 2021 | Version v1
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Mapping wheel-ruts from timber harvesting operations using deep learning techniques in drone imagery - codes

  • 1. Norwegian Institute of Bioeconomy Research NIBIO
  • 2. Stellenbosch University, South Africa

Description

  • CNN based automatic wheel rut detection in harvested forest areas. The published paper and more details on the study can be found at: https://doi.org/10.1093/forestry/cpac023
  • The codes with detailed explanation are available at: https://github.com/SmartForest-no/wheelRuts_semanticSegmentation - Please refer it. 
  • The model is saved as 'weights' and is a .json file - used for predicting Wheel Ruts and Non-Wheel Ruts. The weights can be obtained from the NEW VERSION of doi.
  • The model was trained for multiple epochs with ~2500 images from 20 harvested forest sites in Norway. The model is ResNet50 + UNet semantic segmentation model with pre-trained weights from ImageNet to train ResNet50 model. UNet has been trained from scratch. For optimal identification of the wheel ruts, we recommend using 20 meters x 20 meters of images.

Files

codes.zip

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Additional details

Related works

Is supplemented by
Preprint: https://zenodo.org/record/5208232#.YS3tko4zZaQ (URL)