Abstract

In India, the second-largest sugarcane producing country in the world, accurate mapping of sugarcane land is a key to designing targeted agricultural policies. Such a map is not available, however, as it is challenging to reliably identify sugarcane areas using remote sensing due to sugarcane’s phenological characteristics, coupled with a range of cultivation periods for different varieties. To produce a modern sugarcane map for the Bhima Basin in central India, we utilized crowdsourced data and applied supervised machine learning (neural network) and unsupervised classification methods individually and in combination. We highlight four points. First, smartphone crowdsourced data can be used as an alternative ground truth for sugarcane mapping but requires careful correction of potential errors. Second, although the supervised machine learning method performs best for sugarcane mapping, the combined use of both classification methods improves sugarcane mapping precision at the cost of worsening sugarcane recall and missing some actual sugarcane area. Third, machine learning image classification using high-resolution satellite imagery showed significant potential for sugarcane mapping. Fourth, our best estimate of the sugarcane area in the Bhima Basin is twice that shown in government statistics. This study provides useful insights into sugarcane mapping that can improve the approaches taken in other regions.

Highlights

  • Publisher’s Note: MDPI stays neutralIndia is the second-largest producer of sugarcane in the world, and it produced405 million metric tons (19.7% of the world sugarcane crop) over an estimated area of 51 million ha in 2019 [1]

  • Crop mapping in India has focused on rice, there have been few sugarcane mapping efforts, and existing sugarcane maps from published literature disagree

  • The challenges for sugarcane mapping in India include the lack of ground-truth data and confounding phenological characteristics

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Summary

Introduction

India is the second-largest producer of sugarcane in the world, and it produced. 405 million metric tons (19.7% of the world sugarcane crop) over an estimated area of 51 million ha in 2019 [1]. There are a few existing sugarcane maps for India from global remote sensing-based projects, we found that these maps are outdated and inaccurate (see Section 2.1). The Government statistics on sugarcane area exist up to recent years, but the data are spatially aggregated and there are concerns about their accuracy [4,5,6,7]. We aimed to produce a 2019–2020 sugarcane map and estimate the sugarcane area in the Bhima Basin, which is a major sugarcane producing region in Maharashtra

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