Machine learning classifiers &Classifier ensample: improvement of land cover classification - Softcover

Taha, Lamyaa; Ibrahim, Rania; Mandouh, Asmaa

 
9786206845867: Machine learning classifiers &Classifier ensample: improvement of land cover classification

Inhaltsangabe

There are an emergent machine learning(ML) algorithms to classify land-cover and land-use. In this book we focus on the relatively mature methods (seven methods) support vector (SVM) machines, decision trees (DTs), artificial neural networks, k-nearest neighbours (k-NN), naïve Bayes, Boosting and Random forest (RF).Accurate and timely collection of urban land use and land cover information is crucial for many aspects of urban development and environment protection.Accurate land covers classification is challenging. Improving land cover classification is a hot topic. It is needed for many applications such as land use land cover mapping environmental monitoring, natural resource management, urban planning, and management and change detection. Then a number of ensample methods were studied to combine various classifiers.

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Über die Autorin bzw. den Autor

Prof. Lamyaa Gamal Eldeen Taha: Pofessor in surveying and photogrammetry. Head of Aviation and aerial photography division, National Authority for Remote Sensing and Space science.Dr. Rania E. Ibrahim: Head of documentation and scientific publishing department, National Authority for Remote Sensing and Space science.Eng.Asmaa A.Mandouh NARSS.

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