Abstract

With the recent launch of new satellites and the developments of spatiotemporal data fusion methods, we are entering an era of high spatiotemporal resolution remote-sensing analysis. This study proposed a method to reconstruct daily 30 m remote-sensing data for monitoring crop types and phenology in two study areas located in Xinjiang Province, China. First, the Spatial and Temporal Data Fusion Approach (STDFA) was used to reconstruct the time series high spatiotemporal resolution data from the Huanjing satellite charge coupled device (HJ CCD), Gaofen satellite no. 1 wide field-of-view camera (GF-1 WFV), Landsat, and Moderate Resolution Imaging Spectroradiometer (MODIS) data. Then, the reconstructed time series were applied to extract crop phenology using a Hybrid Piecewise Logistic Model (HPLM). In addition, the onset date of greenness increase (OGI) and greenness decrease (OGD) were also calculated using the simulated phenology. Finally, crop types were mapped using the phenology information. The results show that the reconstructed high spatiotemporal data had a high quality with a proportion of good observations (PGQ) higher than 0.95 and the HPLM approach can simulate time series Normalized Different Vegetation Index (NDVI) very well with R2 ranging from 0.635 to 0.952 in Luntai and 0.719 to 0.991 in Bole, respectively. The reconstructed high spatiotemporal data were able to extract crop phenology in single crop fields, which provided a very detailed pattern relative to that from time series MODIS data. Moreover, the crop types can be classified using the reconstructed time series high spatiotemporal data with overall accuracy equal to 0.91 in Luntai and 0.95 in Bole, which is 0.028 and 0.046 higher than those obtained by using multi-temporal Landsat NDVI data.

Highlights

  • As remote sensing satellites can image Earth periodically, time series remote-sensing data analysis has become a main technique for many remote-sensing applications

  • The mean and standard deviation (Stdev) value of vegetation Normalized Different Vegetation Index (NDVI) of Huanjing satellite constellation (HJ), Landsat, and Gaofen satellite no. 1 (GF-1) wide field-of-view camera (WFV) sensor showed a large difference before sensor adjustment

  • The difference between GF-1 WFV NDVI data and HJ NDVI data is much smaller than the difference between Landsat and HJ NDVI data

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Summary

Introduction

As remote sensing satellites can image Earth periodically, time series remote-sensing data analysis has become a main technique for many remote-sensing applications. Several data fusion approaches have been proposed to combine moderate-resolution data with high temporal and coarse spatial resolution data to generate daily moderate-resolution data These approaches have been widely used in monitoring land surface and environmental processes. The Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) proposed by Gao et al [24] is the most widely used model for blending Moderate Resolution Imaging Spectroradiometer (MODIS) and Landsat imagery. It was applied successfully in the production of daily land surface temperature data, forest disturbance mapping, and studies of environment monitoring [25,26,27,28,29]. Huanjing satellite charge coupled device (HJ CCD) Gaofen satellite no. 1 wide field-of-view camera (GF-1 WFV) Landsat Thematic Mapper (TM)/ Operational Land Imager (OLI) Moderate Resolution Imaging Spectroradiometer (MODIS)

HJ-1 CCD Data
GF-1 WFV Data
Phenology Detection
Crop Mapping
Evaluation of Gap Filling Results
Quality Evaluation of Time Series NDVI Data
Verification of Extracted Phenology with Crop Calendars
Verification of Crop Mapping Result with Field Data
Calibrations of NDVI from Different Sensors
Gap Filling NDVI Time Series and Evaluation
Assessment of the Reconstructed Time Series High Spatial Data
Assessment of the Reconstructed Time Series High12Spatial Data
DCisocrunssion
Comparison with Other Mapping Methods
Limitations
Conclusions
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