Abstract

Abstract. In season crop area mapping is of significant importance for multiple reasons such as monitoring if crop health and residue burning areas, etc. Wheat is one of the important cereal crop cultivated all across the India, with Punjab-Haryana being the prime contributors to the total production. In this study we propose a method for early season Wheat area mapping using the combined use of temporal Sentinel-1 and 2 observations. Further, we propose a method to estimate the crop phenology parameter viz. sowing date using the early time series of Normalized Difference Vegetation Index (NDVI). Few districts from Haryana and Punjab have been selected. The Wheat sowing starts in month of Oct.–Nov. Considering the sowing window, images available during Oct.–Dec. 2017 have been chosen for early season Wheat area mapping. The field data for Wheat, other crops, forest, water and settlements classes is gathered using human participatory sensing and Google Earth Engine (GEE) platform and used for data analysis. We have assessed the performance of random forest classifier using 1. NDVI derived from Sentinel-2, 2. VV and VH backscatter obtained from Sentinel-1 and 3. Both NDVI and VV-VH backscatter. Results show the maximum classification accuracy of 88.31 % when using combination of NDVI, VV and VH. However, accuracy drops to 87.19 % and 79.16 % while using NDVI and VV-VH respectively. Further, to estimate the sowing date we have considered the NDVI time-series during Oct.–Dec. for Wheat pixels. A method based on NDVI compositing is used with gradual increase of 0.1–0.15 at every 12 days for subsequent two images. We have found a good agreement between the estimated sowing dates and actual sowing dates.

Highlights

  • Wheat is one of the important cereal crops cultivated in India with key contribution in terms of area and production

  • The information on the temporal pattern in the sowing window would be helpful to the stakeholders to track the probable crop residue burning activities and plan the remedial actions to avoid/minimize the burning

  • The first stage involves the Wheat area mapping using temporal Normalized Difference Vegetation Index (NDVI) derived from Sentinel-2 data and VV and VH backscatter obtained from Sentinel-1 satellite

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Summary

Introduction

Wheat is one of the important cereal crops cultivated in India with key contribution in terms of area and production. India ranks second in wheat production after China. In India, Wheat was cultivated on 314.65 lakh hectares during 2014-15 which reduced to 304.18 and 305.97 lakh hectares during 201516 and 2016-17 respectively. The information on spatial distribution of Wheat cropping areas is useful for stakeholders (e.g. cultivators, fertilizer/pesticide manufacturers and agriculture extension agencies) to effectively plan supply of inputs, market activities. The information on the temporal pattern in the sowing window would be helpful to the stakeholders to track the probable crop residue burning activities and plan the remedial actions to avoid/minimize the burning. Spatio-temporal Wheat crop area maps are useful in getting the estimates on regional water demand, input to crop health and crop yield models

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