4.7 Article

Classifying Crop Types Using Two Generations of Hyperspectral Sensors (Hyperion and DESIS) with Machine Learning on the Cloud

Journal

REMOTE SENSING
Volume 13, Issue 22, Pages -

Publisher

MDPI
DOI: 10.3390/rs13224704

Keywords

hyperspectral remote sensing; food security; machine learning; cloud-computing

Funding

  1. USGS National Land Imaging (NLI) program of the Land Resources Mission Area
  2. USGS Land Change Science (LCS) program of the Land Resources Mission Area
  3. Core Science Systems (CSS) Mission Area
  4. USGS Mendenhall Postdoctoral Fellowship program
  5. waterSMART (Sustain and Manage America's Resources for Tomorrow) project
  6. NASA MEaSUREs program through Global Food Security-support Analysis Data (GFSAD) project [NNH13AV82I]
  7. NASA HyspIRI (Hyperspectral Infrared Imager currently renamed as Surface Biology and Geology or SBG) mission [NNH10ZDA001N-HYSPIRI]

Ask authors/readers for more resources

Advancements in spaceborne hyperspectral remote sensing, cloud-computing, and machine learning technologies have allowed for accurate measurement, modeling, mapping, and monitoring of agricultural crops to enhance productivity. Leveraging these advancements enables the classification of major crops with high accuracy, especially when combining different spectral data and algorithms throughout the growing season.
Advances in spaceborne hyperspectral (HS) remote sensing, cloud-computing, and machine learning can help measure, model, map and monitor agricultural crops to address global food and water security issues, such as by providing accurate estimates of crop area and yield to model agricultural productivity. Leveraging these advances, we used the Earth Observing-1 (EO-1) Hyperion historical archive and the new generation DLR Earth Sensing Imaging Spectrometer (DESIS) data to evaluate the performance of hyperspectral narrowbands in classifying major agricultural crops of the U.S. with machine learning (ML) on Google Earth Engine (GEE). EO-1 Hyperion images from the 2010-2013 growing seasons and DESIS images from the 2019 growing season were used to classify three world crops (corn, soybean, and winter wheat) along with other crops and non-crops near Ponca City, Oklahoma, USA. The supervised classification algorithms: Random Forest (RF), Support Vector Machine (SVM), and Naive Bayes (NB), and the unsupervised clustering algorithm WekaXMeans (WXM) were run using selected optimal Hyperion and DESIS HS narrowbands (HNBs). RF and SVM returned the highest overall producer's, and user's accuracies, with the performances of NB and WXM being substantially lower. The best accuracies were achieved with two or three images throughout the growing season, especially a combination of an earlier month (June or July) and a later month (August or September). The narrow 2.55 nm bandwidth of DESIS provided numerous spectral features along the 400-1000 nm spectral range relative to smoother Hyperion spectral signatures with 10 nm bandwidth in the 400-2500 nm spectral range. Out of 235 DESIS HNBs, 29 were deemed optimal for agricultural study. Advances in ML and cloud-computing can greatly facilitate HS data analysis, especially as more HS datasets, tools, and algorithms become available on the Cloud.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available