Abstract

The sustainable development goals of the United Nations, as well as the era of pandemics have introduced serious challenges for agricultural production and management. Precise management of agricultural practices based on satellite-borne remote sensing has been considered an effective means for monitoring cropping patterns and crop-farming patterns. Therefore, we proposed a simple and generic approach to identify multi-year cotton-cropping patterns based on time series of Landsat and Sentinel-2 images, with few ground samples that covered many years, a simple classification algorithm, and had a high classification accuracy. In this approach, we extended the size of training samples using active learning, and we employed a random forest algorithm to extract multi-year cotton planting patterns based on dense time series of Landsat and Sentinel-2 data from 2014 to 2018. We created annual crop cultivation maps based on training samples with an accuracy greater than 95.69%. The accuracy of multi-year cotton cropping patterns was 96.93%. The proposed approach was effective and robust in identifying multi-year cropping patterns, and it could be applied in other regions.

Highlights

  • We aimed to (1) map pixelbased intra-annual crop classification using random forest algorithm; (2) map the multi-year cotton-cropping pattern based on time series of Landsat and Senitinel-2 remote sensing images and the expanded training sample sizes of multi-year cotton cropping patterns using the random forest classification algorithm

  • We found that the overall accuracy of multi-year cotton cropping pattern classification based on pixel-based random forest (RF) classification (96.93%) was relatively higher than the classification based on the GIS-driven method (87.8%)

  • The comparisons demonstrate that annual crop classification errors can accumulate to affect the accuracy of temporal trajectories of multiyear cotton cropping patterns based on GIS spatial overlay analysis method

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. It is estimated that by 2050, the total global population will reach 9.8 billion [1,2], and the number of people affected by hunger will surpass 840 million by 2030 [3]. Ensuring food security plays a vital role in realizing global sustainable development goals (SDGs). In 2015, the United Nations proposed a sustainable development goal by 2030 titled “Zero

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