Multi-day vegetation index (VI) composite images, the basis for crop yield estimation, are subject to temporal information losses. Using the Normalized Difference Vegetation Index (NDVI) and Enhanced Vegetation Index (EVI) from Landsat_5_TM and Landsat_7_ETM, we reconstructed time-series VI using temporal information and a mathematical model to estimate yield. The results indicated the following: (i) The reconstructed model describes real changes in VI during crop growth. (ii) The Extreme model is best for cotton growth process delineation. Compared to NDVI, EVI is appropriate for the reconstruction of time series VI curves, obtaining a model-fitting coefficient of 0.97 and a root mean square error (RMSE) of 0.05. (iii) The correlation betw...
Developing accurate models of crop stress, phenology and productivity is of paramount importance, gi...
Crop status, such as the Green Area Index (GAI), can be retrieved from satellite observations by mod...
A global observation capacity is required for agricultural production forecasts and food security al...
Research on fusion modeling of high spatial and temporal resolution images typically uses MODIS prod...
Research on fusion modeling of high spatial and temporal resolution images typically uses MODIS prod...
Satellite data can significantly contribute to agricultural monitoring. The reflected radiation, as ...
The availability of satellite images has generated a large number of regional and global studies on ...
none4siThe research reports an analysis on satellite vegetation indices (VIs) derived from Landsat 5...
A study was undertaken to investigate the possibility of using the Normalised Difference Vegetation ...
Normalized Difference Vegetation Index (NDVI) derived from Advanced Very High Resolution Radiometer ...
Cotton is a significant cash crop of China. Timely and accurate cotton area and yield estimation is ...
ABSTRACT: Satellite images and geostatistics are useful tools to assess the nutritional status of pl...
The thesis explored the feasibility of using remotely sensed image and its derived products, Normali...
The objective of this study was the spatial identification of the NDVI index and cotton yield distri...
This study aimed to simulate the spatiotemporal variation in cotton (Gossypium hirsutum L.) growth a...
Developing accurate models of crop stress, phenology and productivity is of paramount importance, gi...
Crop status, such as the Green Area Index (GAI), can be retrieved from satellite observations by mod...
A global observation capacity is required for agricultural production forecasts and food security al...
Research on fusion modeling of high spatial and temporal resolution images typically uses MODIS prod...
Research on fusion modeling of high spatial and temporal resolution images typically uses MODIS prod...
Satellite data can significantly contribute to agricultural monitoring. The reflected radiation, as ...
The availability of satellite images has generated a large number of regional and global studies on ...
none4siThe research reports an analysis on satellite vegetation indices (VIs) derived from Landsat 5...
A study was undertaken to investigate the possibility of using the Normalised Difference Vegetation ...
Normalized Difference Vegetation Index (NDVI) derived from Advanced Very High Resolution Radiometer ...
Cotton is a significant cash crop of China. Timely and accurate cotton area and yield estimation is ...
ABSTRACT: Satellite images and geostatistics are useful tools to assess the nutritional status of pl...
The thesis explored the feasibility of using remotely sensed image and its derived products, Normali...
The objective of this study was the spatial identification of the NDVI index and cotton yield distri...
This study aimed to simulate the spatiotemporal variation in cotton (Gossypium hirsutum L.) growth a...
Developing accurate models of crop stress, phenology and productivity is of paramount importance, gi...
Crop status, such as the Green Area Index (GAI), can be retrieved from satellite observations by mod...
A global observation capacity is required for agricultural production forecasts and food security al...