Abstract

Crop planting area mapping and phenology monitoring are of great importance to analyzing the impacts of climate change on agricultural production. In this study, crop planting area and phenology were identified based on Sentinel-1 backscatter time series in the test region of the North China Plain, East Asia, which has a stable cropping pattern and similar phenological stages across the region. Ground phenological observations acquired from a typical agro-meteorological station were used as a priori knowledge. A parallelepiped classifier processed VH (vertical transmitting, horizontal receiving) and VV (vertical transmitting, vertical receiving) backscatter signals in order to map the winter wheat planting area. An accuracy assessment showed that the total classification accuracy reached 84% and the Kappa coefficient was 0.77. Both the difference ( σ d ) between VH and VV and its slope were obtained to contrast with a priori knowledge and then used to extract the phenological metrics. Our findings from the analysis of the time series showed that the seedling, tillering, overwintering, jointing, and heading of winter wheat may be closely related to σ d and its slope. Overall, this study presents a generalizable methodology for mapping the winter wheat planting area and monitoring phenology using Sentinel-1 backscatter time series, especially in areas lacking optical remote sensing data. Our results suggest that the main change in Sentinel-1 backscatter is dominated by the vegetation canopy structure, which is different from the established methods using optical remote sensing data, and it is available for phenological metrics extraction.

Highlights

  • Phenology is strongly related to the seasonal dynamics of a growth environment and plays an important role in vegetation monitoring [1,2]

  • Some other growth stages could not be identified in this case, our study has thrown light on the monitoring of winter wheat using Sentinel-1 backscatter time series

  • It should be noted that the phenological metrics based on the analysis of backscatter time series have shown the main changes in the canopy structure which are different than those in previous research based on NDVI or other vegetation indices [49,50]

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Summary

Introduction

Phenology is strongly related to the seasonal dynamics of a growth environment and plays an important role in vegetation monitoring [1,2]. This study aims to assess the potential of Sentinel-1 satellite SAR imagery for mapping a winter wheat planting area and further monitoring phenology when optimal remote sensing data are not available due to atmospheric effects such as cloud and haze contamination. For this purpose, we focused on a test region in the North China Plain, which is a staple wheat-producing area of China. Our study will help (1) distinguish the winter wheat planting area from other land types, (2) explain how the backscatter signatures change during the winter wheat growing season, and (3) monitor winter wheat phenology using a stable and robust data source

Study Area and Data
Phenological Metrics Extraction
Monitoring of Winter Wheat Phenology
Findings
Conclusions
Full Text
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