IGSNRR OpenIR
monitoringofwinterwheatdistributionandphenologicalphasesbasedonmodistimeseriesacasestudyintheyellowriverdeltachina
Chu Lin; Liu Qingsheng; Huang Chong; Liu Gaohuan
2016
Source Publicationjournalofintegrativeagriculture
ISSN2095-3119
Volume15Issue:10Pages:2403
AbstractAccurate winter wheat identification and phenology extraction are essential for field management and agricultural policy making. here, we present mechanisms of winter wheat discrimination and phenological detection in the yellow river delta (yrd) region using moderate resolution imaging spectroradiometer (modis) time-series data. the normalized difference vegetation index (ndvi) was obtained by calculating the surface reflectance in red and infrared. we used the savitzky-golay filter to smooth time series ndvi curves. we adopted a two-step classification to identify winter wheat. the first step was designed to mask out non-vegetation classes, and the second step aimed to identify winter wheat from other vegetation based on its phenological features. we used the double gaussian model and the maximum curvature method to extract phenology. due to the characteristics of the time-series profiles for winter wheat, a double gaussian function method was selected to fit the temporal profile. a maximum curvature method was performed to extract phenological phases. phenological phases such as the green-up, heading and harvesting phases were detected when the ndvi curvature exhibited local maximum values. the extracted phenological dates then were validated with records of the ground observations. the spatial patterns of phenological phases were investigated. this study concluded that, for winter wheat, the accuracy of classification is 87.07%, and the accuracy of planting acreage is 90.09%. the phenological result was comparable to the ground observation at the municipal level. the average green-up date for the whole region occurred on march 5, the average heading date occurred on may 9, and the average harvesting date occurred on june 5. the spatial distribution of the phenology for winter wheat showed a significant gradual delay from the southwest to the northeast. this study demonstrates the effectiveness of our proposed method for winter wheat classification and phenology detection.
Language英语
Document Type期刊论文
Identifierhttp://ir.igsnrr.ac.cn/handle/311030/117462
Collection中国科学院地理科学与资源研究所
Affiliation中国科学院地理科学与资源研究所
First Author Affilication中国科学院地理科学与资源研究所
Recommended Citation
GB/T 7714
Chu Lin,Liu Qingsheng,Huang Chong,et al. monitoringofwinterwheatdistributionandphenologicalphasesbasedonmodistimeseriesacasestudyintheyellowriverdeltachina[J]. journalofintegrativeagriculture,2016,15(10):2403.
APA Chu Lin,Liu Qingsheng,Huang Chong,&Liu Gaohuan.(2016).monitoringofwinterwheatdistributionandphenologicalphasesbasedonmodistimeseriesacasestudyintheyellowriverdeltachina.journalofintegrativeagriculture,15(10),2403.
MLA Chu Lin,et al."monitoringofwinterwheatdistributionandphenologicalphasesbasedonmodistimeseriesacasestudyintheyellowriverdeltachina".journalofintegrativeagriculture 15.10(2016):2403.
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