Skip to content

myliheik/cropyieldArticle

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

26 Commits
 
 
 
 

Repository files navigation

Scalable crop yield mapping with Sentinel-2 time series and temporal convolutional network (TCN)

This repository includes codes for preprocessing the data from Sentinel-2 L2A product into time series and and ready for the prediction models TCN and random forests (RF).

in python/

  • 01-splitshp-shadow.py: ESRI shapefile for polygons (field parcel) is split into subsets (files) by Sentinel-2 granule boundaries.
  • 02-pathfinder.py: filepaths to Sentinel-2 bands is searched. Use this if no intentions for cloud-masking.
  • 02-safefinder.py: directory paths to Sentinel-2 SAFE directories. Use this if cloud-masking wanted.
  • 03-arrayextractor.py: extract pixel values from bands by polygons. Cloud-mask used is safe paths given.
  • 04-flatten-temporal.py: flatten the observations into 11-day temporal composites.
  • 05-histogramize-shadow.py: calculate histograms for each observation (band).
  • 05-medianize.py: calculate median for each observation (band).
  • 06-histo2stack.py: stack histograms from separate files into one file.
  • 06-median2stack.py: stack medians from separate files into one file.
  • 07-medianstack2ARD.py: make analysis ready data from medians.
  • 07-stack2ARD.py: make analysis ready data from histograms.
  • 07C-doyFusion-median.py: if duplicates at day-of-year, merge all observations per day per farm into one (matrix addition)
  • 07C-doyFusion.py: if duplicates at day-of-year, merge all observations per day per farm into one (matrix addition)
  • 08A-removeDuplicates-parallel.py: remove duplicates, if any, compute marix addition.
  • 08B-mergeObservations-parallel.py: merge farms by region
  • 08-mergeTarget-parallel.py: merge values with reference to write target y files for training.
  • 09-runRF-article-iterate.py: run RF, iterate 10 times for each data set (hard coded)
  • 09-runTCN-article-iterate.py: run TCN, iterate 10 times for each data set (hard coded)

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages