Self-adapting extraction of cropland phenological transitions of rotation agroecosystems using dynamically fused NDVI images
暂无分享,去创建一个
Wei Shui | J. Zeng | Rongrong Zhang | Jia Tang | Qianfeng Wang | Zhanghua Xu | Song Leng | Yue Zeng | Qing Zhang
[1] Jinghan Li,et al. A modified flexible spatiotemporal data fusion model , 2020, Frontiers of Earth Science.
[2] Jiali Shang,et al. Using spatio-temporal fusion of Landsat-8 and MODIS data to derive phenology, biomass and yield estimates for corn and soybean. , 2019, The Science of the total environment.
[3] Peng Wang,et al. A Bibliometric Profile of the Remote Sensing Open Access Journal Published by MDPI between 2009 and 2018 , 2019, Remote. Sens..
[4] Ze Yu,et al. Squint Mode GEO SAR Imaging Using Bulk Range Walk Correction on Received Signals , 2018, Remote. Sens..
[5] Meiling Liu,et al. Detection of Rice Phenological Variations under Heavy Metal Stress by Means of Blended Landsat and MODIS Image Time Series , 2018, Remote. Sens..
[6] Zhao Zhang,et al. Improving regional winter wheat yield estimation through assimilation of phenology and leaf area index from remote sensing data , 2018, European Journal of Agronomy.
[7] Ji Zhou,et al. A simple method to improve the quality of NDVI time-series data by integrating spatiotemporal information with the Savitzky-Golay filter , 2018, Remote Sensing of Environment.
[8] L. Wan,et al. Vegetation phenology and its variations in the Tibetan Plateau, China , 2018, International Journal of Remote Sensing.
[9] Hanqiu Xu,et al. Predicting effect of forthcoming population growth–induced impervious surface increase on regional thermal environment: Xiong'an New Area, North China , 2018 .
[10] D. Helman. Land surface phenology: What do we really 'see' from space? , 2018, The Science of the total environment.
[11] Yunyan Du,et al. An integrated model for generating hourly Landsat-like land surface temperatures over heterogeneous landscapes , 2018 .
[12] Yee Leung,et al. A Bayesian Data Fusion Approach to Spatio-Temporal Fusion of Remotely Sensed Images , 2017, Remote. Sens..
[13] Per Jönsson,et al. Performance of Smoothing Methods for Reconstructing NDVI Time-Series and Estimating Vegetation Phenology from MODIS Data , 2017, Remote. Sens..
[14] Quansheng Ge,et al. Spring green-up date derived from GIMMS3g and SPOT-VGT NDVI of winter wheat cropland in the North China Plain , 2017 .
[15] Wenfeng Chi,et al. Understanding long-term (1982-2013) patterns and trends in winter wheat spring green-up date over the North China Plain , 2017, Int. J. Appl. Earth Obs. Geoinformation.
[16] Jianjun Wu,et al. A comprehensively quantitative method of evaluating the impact of drought on crop yield using daily multi-scale SPEI and crop growth process model , 2017, International Journal of Biometeorology.
[17] G. Henebry,et al. Exploration of scaling effects on coarse resolution land surface phenology , 2017 .
[18] Min Chen,et al. A new seasonal‐deciduous spring phenology submodel in the Community Land Model 4.5: impacts on carbon and water cycling under future climate scenarios , 2016, Global change biology.
[19] Xiang Li,et al. Land Cover Classification Based on Fused Data from GF-1 and MODIS NDVI Time Series , 2016, Remote. Sens..
[20] Tsegaye Tadesse,et al. A hybrid approach for detecting corn and soybean phenology with time-series MODIS data , 2016 .
[21] Mingguo Ma,et al. An Effective Compound Algorithm for Reconstructing MODIS NDVI Time Series Data and Its Validation Based on Ground Measurements , 2016, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[22] Jurandy Almeida,et al. Modeling plant phenology database: Blending near-surface remote phenology with on-the-ground observations , 2016 .
[23] Rasmus Fensholt,et al. An ESTARFM Fusion Framework for the Generation of Large-Scale Time Series in Cloud-Prone and Heterogeneous Landscapes , 2016, Remote. Sens..
[24] J. Peñuelas,et al. Matching the phenology of Net Ecosystem Exchange and vegetation indices estimated with MODIS and FLUXNET in-situ observations , 2016 .
[25] Christopher D. Lippitt,et al. Remote Sensing Based Simple Models of GPP in Both Disturbed and Undisturbed Piñon-Juniper Woodlands in the Southwestern U.S , 2015, Remote. Sens..
[26] Tianjie Lei,et al. The alleviating trend of drought in the Huang‐Huai‐Hai Plain of China based on the daily SPEI , 2015 .
[27] Limin Wang,et al. Mapping crop phenology using NDVI time-series derived from HJ-1 A/B data , 2015, Int. J. Appl. Earth Obs. Geoinformation.
[28] Jin Chen,et al. An improved logistic method for detecting spring vegetation phenology in grasslands from MODIS EVI time-series data , 2015 .
[29] Mingguo Ma,et al. Comparison of Eight Techniques for Reconstructing Multi-Satellite Sensor Time-Series NDVI Data Sets in the Heihe River Basin, China , 2014, Remote. Sens..
[30] M. D. Schwartz,et al. Spring onset variations and trends in the continental United States: past and regional assessment using temperature‐based indices , 2013 .
[31] M. Friedl,et al. Detecting interannual variation in deciduous broadleaf forest phenology using Landsat TM/ETM+ data , 2013 .
[32] Y. Xue,et al. Terrestrial biosphere models need better representation of vegetation phenology: results from the North American Carbon Program Site Synthesis , 2012 .
[33] R. Pontius,et al. Death to Kappa: birth of quantity disagreement and allocation disagreement for accuracy assessment , 2011 .
[34] Jianxi Huang,et al. Regional Crop Yield Assessment by Combination of a Crop Growth Model and Phenology Information Derived from MODIS , 2011 .
[35] Xiaolin Zhu,et al. An enhanced spatial and temporal adaptive reflectance fusion model for complex heterogeneous regions , 2010 .
[36] Andrew E. Suyker,et al. A Two-Step Filtering approach for detecting maize and soybean phenology with time-series MODIS data , 2010 .
[37] Michael H. Young,et al. Monitoring Vegetation Phenological Cycles in Two Different Semi-Arid Environmental Settings Using a Ground-Based NDVI System: A Potential Approach to Improve Satellite Data Interpretation , 2010, Remote. Sens..
[38] J. Abatzoglou,et al. Tracking the rhythm of the seasons in the face of global change: phenological research in the 21st century. , 2009 .
[39] R. Ahas,et al. Onset of spring starting earlier across the Northern Hemisphere , 2006 .
[40] A. Strahler,et al. Monitoring vegetation phenology using MODIS , 2003 .
[41] Mark D. Schwartz,et al. Green-wave phenology , 1998, Nature.
[42] F. Baret,et al. Potentials and limits of vegetation indices for LAI and APAR assessment , 1991 .
[43] C. Tucker,et al. Satellite remote sensing of primary production , 1986 .