4.7 Article

Mapping of cropland, cropping patterns and crop types by combining optical remote sensing images with decision tree classifier and random forest

Journal

GEO-SPATIAL INFORMATION SCIENCE
Volume 26, Issue 3, Pages 302-320

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/10095020.2022.2100287

Keywords

Sentinel-2; Random Forest; cropland; crop types; cropping patterns; Decision Tree Classifier

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This study successfully identified and monitored croplands, crop types, and cropping patterns in Gujranwala District, Pakistan, using machine learning and remote sensing techniques with Sentinel-2 and Landsat-8 imagery. The results demonstrated a high level of accuracy when validated at the county level, indicating the potential benefits of this methodology for monitoring and evaluating food security in Pakistan.
Mapping and monitoring the distribution of croplands and crop types support policymakers and international organizations by reducing the risks to food security, notably from climate change and, for that purpose, remote sensing is routinely used. However, identifying specific crop types, cropland, and cropping patterns using space-based observations is challenging because different crop types and cropping patterns have similarity spectral signatures. This study applied a methodology to identify cropland and specific crop types, including tobacco, wheat, barley, and gram, as well as the following cropping patterns: wheat-tobacco, wheat-gram, wheat-barley, and wheat-maize, which are common in Gujranwala District, Pakistan, the study region. The methodology consists of combining optical remote sensing images from Sentinel-2 and Landsat-8 with Machine Learning (ML) methods, namely a Decision Tree Classifier (DTC) and a Random Forest (RF) algorithm. The best time-periods for differentiating cropland from other land cover types were identified, and then Sentinel-2 and Landsat 8 NDVI-based time-series were linked to phenological parameters to determine the different crop types and cropping patterns over the study region using their temporal indices and ML algorithms. The methodology was subsequently evaluated using Landsat images, crop statistical data for 2020 and 2021, and field data on cropping patterns. The results highlight the high level of accuracy of the methodological approach presented using Sentinel-2 and Landsat-8 images, together with ML techniques, for mapping not only the distribution of cropland, but also crop types and cropping patterns when validated at the county level. These results reveal that this methodology has benefits for monitoring and evaluating food security in Pakistan, adding to the evidence base of other studies on the use of remote sensing to identify crop types and cropping patterns in other countries.

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