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Deep Learning for Geographical Data
Students have a fundamental understanding of the principles, structure, and working of neural networks and their common architectures for solving tasks such as classification, regression, localization, recognition, segmentation, etc., in the context of geoinformation related applications. They are able to plan, implement, train, and evaluate the performance of application-specific deep neural network architectures for processing geographical 2D/3D data such as raster, vector, network, and point cloud data. The students are well acquainted with the established software libraries for Deep Learning and are able to use them self-reliantly.
Lectures | Deep Learning for Geographical Data VL 3633 L 9072 UE 3633 L 9073 |
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Module type | Compulsory elective |
Person in charge | Prof. Dr.-Ing. Martin Kada |
Entry requirements | Computer literacy |
Duration | 1 semester |
Examination | Oral exam |
Workload | Overall attendance: 15 x 4 h = 60 h Preparation and post processing: 15 x 8 h = 120 h |