This project applies machine learning techniques to remotely sensed imagery to train and validate predictive models of vegetation health in Bangladesh and Sri Lanka. For both locations, we downloaded and processed eleven years of imagery from multiple MODIS datasets which were combined and transformed into two-dimensional matrices. We applied a gradient boosted machines model to the lagged dataset values to forecast future values of the Enhanced Vegetation Index (EVI). The predictive power of raw spectral data MODIS products were compared across time periods and land use categories. Our models have significantly more predictive power on held-out datasets than a baseline. Though the tool was built to increase capacity to monitor vegetation h...
The overall goal of this study is to define an intelligent system for predicting citrus fruit yield ...
Recently, there has been a remarkable growth in Artificial Intelligence (AI) with the development of...
The purpose of this project is to test if we can predict which sagebrush will flower by utilizing a ...
This project applies machine learning techniques to remotely sensed imagery to train and validate pr...
This project was a step forward in statistical methodology for predicting green vegetation land cove...
Machine learning (ML) techniques can be applied to predict and monitor drought conditions due to cli...
The Normalized Difference Vegetation Index (NDVI) is a well-known indicator of the greenness of the ...
East Africa has experienced a number of devastating droughts in recent decades, including the 2010/2...
Semi-natural grasslands are amongst the most biodiverse ecosystems in Europe, though their importanc...
Data for the publication published in MDPI Remote Sensing: Deep Learning for Vegetation Health Forec...
The determination of cropland suitability is a major step for adapting to the increased food demands...
Accurate and up-to-date spatial agricultural information is essential for applications including agr...
Vegetation is an essential component of our global ecosystem and an important indicator of the dynam...
Fine particulate matter (PM2.5) has been recognized as a key air pollutant that can influence popula...
The growing world is more expensive to estimate land use, road length, and forest cover using a plan...
The overall goal of this study is to define an intelligent system for predicting citrus fruit yield ...
Recently, there has been a remarkable growth in Artificial Intelligence (AI) with the development of...
The purpose of this project is to test if we can predict which sagebrush will flower by utilizing a ...
This project applies machine learning techniques to remotely sensed imagery to train and validate pr...
This project was a step forward in statistical methodology for predicting green vegetation land cove...
Machine learning (ML) techniques can be applied to predict and monitor drought conditions due to cli...
The Normalized Difference Vegetation Index (NDVI) is a well-known indicator of the greenness of the ...
East Africa has experienced a number of devastating droughts in recent decades, including the 2010/2...
Semi-natural grasslands are amongst the most biodiverse ecosystems in Europe, though their importanc...
Data for the publication published in MDPI Remote Sensing: Deep Learning for Vegetation Health Forec...
The determination of cropland suitability is a major step for adapting to the increased food demands...
Accurate and up-to-date spatial agricultural information is essential for applications including agr...
Vegetation is an essential component of our global ecosystem and an important indicator of the dynam...
Fine particulate matter (PM2.5) has been recognized as a key air pollutant that can influence popula...
The growing world is more expensive to estimate land use, road length, and forest cover using a plan...
The overall goal of this study is to define an intelligent system for predicting citrus fruit yield ...
Recently, there has been a remarkable growth in Artificial Intelligence (AI) with the development of...
The purpose of this project is to test if we can predict which sagebrush will flower by utilizing a ...