Optimal Sample Size and Composition for Crop Classification with Sen2-Agri’s Random Forest Classifier

Author:

Schulthess Urs1ORCID,Rodrigues Francelino23,Taymans Matthieu4,Bellemans Nicolas4,Bontemps Sophie4ORCID,Ortiz-Monasterio Ivan2,Gérard Bruno25ORCID,Defourny Pierre4

Affiliation:

1. CIMMYT-China Joint Center for Wheat and Maize Improvement, Henan Agricultural University, Zhengzhou 450002, China

2. CIMMYT-Mexico, Sustainable Agrifood Systems Program (SAS), Texcoco 56237, Mexico

3. Lincoln Agritech Ltd., Lincoln University, Christchurch 7674, New Zealand

4. Earth and Life Institute, Université Catholique de Louvain, 1348 Louvain-la-Neuve, Belgium

5. AgroBioSciences Department, Mohammed VI Polytechnic University, Ben Guerir 43150, Morocco

Abstract

Sen2-Agri is a software system that was developed to facilitate the use of multi-temporal satellite data for crop classification with a random forest (RF) classifier in an operational setting. It automatically ingests and processes Sentinel-2 and LandSat 8 images. Our goal was to provide practitioners with recommendations for the best sample size and composition. The study area was located in the Yaqui Valley in Mexico. Using polygons of more than 6000 labeled crop fields, we prepared data sets for training, in which the nine crops had an equal or proportional representation, called Equal or Ratio, respectively. Increasing the size of the training set improved the overall accuracy (OA). Gains became marginal once the total number of fields approximated 500 or 40 to 45 fields per crop type. Equal achieved slightly higher OAs than Ratio for a given number of fields. However, recall and F-scores of the individual crops tended to be higher for Ratio than for Equal. The high number of wheat fields in the Ratio scenarios, ranging from 275 to 2128, produced a more accurate classification of wheat than the maximal 80 fields of Equal. This resulted in a higher recall for wheat in the Ratio than in the Equal scenarios, which in turn limited the errors of commission of the non-wheat crops. Thus, a proportional representation of the crops in the training data is preferable and yields better accuracies, even for the minority crops.

Funder

CGIAR

Henan Agricultural University

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference34 articles.

1. Immitzer, M., Vuolo, F., and Atzberger, C. (2016). First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe. Remote Sens., 8.

2. (2022, December 11). European Space Agency Sentinel-2 MSI. Available online: https://earth.esa.int/web/sentinel/user-guides/sentinel-2-msi.

3. How Much Does Multi-Temporal Sentinel-2 Data Improve Crop Type Classification?;Vuolo;Int. J. Appl. Earth Obs. Geoinf.,2018

4. (2022, December 13). Sentinel-2 for Agriculture. Available online: http://www.esa-sen2agri.org.

5. Near Real-Time Agriculture Monitoring at National Scale at Parcel Resolution: Performance Assessment of the Sen2-Agri Automated System in Various Cropping Systems around the World;Defourny;Remote Sens. Environ.,2019

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