Spelling suggestions: "subject:"spatiotemporal"" "subject:"patiotemporal""
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A machine learning based spatio-temporal data mining approach for coastal remote sensing dataGokaraju, Balakrishna 07 August 2010 (has links)
Continuous monitoring of coastal ecosystems aids in better understanding of their dynamics and inherent harmful effects. As many of these ecosystems prevail over space and time, there is a need for mining this spatio-temporal information for building accurate monitoring and forecast systems. Harmful Algal Blooms (HABs) pose an enormous threat to the U.S. marine habitation and economy in the coastal waters. Federal and state coastal administrators have been devising a state-of-the-art monitoring and forecasting systems for these HAB events. The efficacy of a monitoring and forecasting system relies on the performance of HAB detection. A Machine Learning based Spatio-Temporal data mining approach for the detection of HAB (STML-HAB) events in the region of Gulf of Mexico is proposed in this work. The spatio-temporal cubical neighborhood around the training sample is considered to retrieve relevant spectral information pertaining to both HAB and Non-HAB classes. A unique relevant feature subset combination is derived through evolutionary computation technique towards better classification of HAB from Non-HAB. Kernel based feature transformation and classification is used in developing the model. STML-HAB model gave significant performance improvements over the current optical detection based techniques by highly reducing the false alarm rate with an accuracy of 0.9642 on SeaWiFS data. The developed model is used for prediction on new datasets for further spatio-temporal analyses such as the seasonal variations of HAB, and sequential occurrence of algal blooms. New variability visualizations are introduced to illustrate the dynamic behavior and seasonal variations of HABs from large spatiotemporal datasets. The results outperformed the ensemble of the currently available empirical methods for HAB detection. The ensemble method is implemented by a new approach for combining the empirical models using a probabilistic neural network model. The model is also compared with the results obtained using various feature extraction techniques, spatial neighborhoods and classifiers.
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Real-time Monitoring and Estimation of Spatio-Temporal Processes Using Co-operative Multi-Agent Systems for Improved Situational AwarenessSharma, Balaji R. January 2013 (has links)
No description available.
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Signature Verification Model: A Long Term Memory ApproachMuraleedharan Nair, Jayakrishnan 25 August 2015 (has links)
No description available.
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Predictive Modeling of Spatio-Temporal Datasets in High DimensionsChen, Linchao 27 May 2015 (has links)
No description available.
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Bayesian Hierarchical Space-Time Clustering MethodsThomas, Zachary Micah 08 October 2015 (has links)
No description available.
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Evapotranspiration Estimation from MOD16 MODIS Data Product and Compared with Flux Tower Observations of ToledoRahman, Md Tajminur, Rahman January 2017 (has links)
No description available.
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Mapping the Future of Motor Vehicle CrashesStakleff, Brandon Alexander 10 September 2015 (has links)
No description available.
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A New Approach to Spatio-Temporal Kriging and Its ApplicationsAgarwal, Abhijat 28 July 2011 (has links)
No description available.
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Dimension Reduced Modeling of Spatio-Temporal Processes with Applications to Statistical DownscalingBrynjarsdóttir, Jenný 26 September 2011 (has links)
No description available.
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Bayesian Dynamical Modeling of Count DataZhuang, Lili 20 October 2011 (has links)
No description available.
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