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#61434 / #1

Seit WiSe 2020/21

English

Deep Learning for Geographical Data

6

Kada, Martin

benotet

Mündliche Prüfung

Zugehörigkeit


Fakultät VI

Institut für Geodäsie und Geoinformationstechnik

36331100 FG Methodik der Geoinformationstechnik

Geodesy and Geoinformation Science

Kontakt


H 12

No information

martin.kada@tu-berlin.de

No information

Learning Outcomes

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.

Content

Introduction to artificial intelligence, artificial neural networks, linear classifier, the perceptron, fully connected neural networks, training by backpropagation, loss and activation functions, weight initialization and regularization, optimizers, hyperparameter tuning, multi-task learning, convolutional neural networks (CNN), common network architectures and custom models, Deep Learning on 3D data and aerial laser scanning point clouds, time series geographical data, recurrent neural networks (RNN), attention mechanism, generative learning with Autoencoders and generative adversarial networks (GAN), Deep Learning libraries (e.g. TensorFlow, PyTorch).

Module Components

Pflichtgruppe:

All Courses are mandatory.

Course NameTypeNumberCycleLanguageSWSVZ
Deep Learning for Geographical DataUEWiSeEnglish2
Deep Learning for Geographical DataVLWiSeEnglish2

Workload and Credit Points

Deep Learning for Geographical Data (UE):

Workload descriptionMultiplierHoursTotal
Attendance15.02.0h30.0h
Pre/post processing15.04.0h60.0h
90.0h(~3 LP)

Deep Learning for Geographical Data (VL):

Workload descriptionMultiplierHoursTotal
Attendance15.02.0h30.0h
Pre/post processing15.04.0h60.0h
90.0h(~3 LP)
The Workload of the module sums up to 180.0 Hours. Therefore the module contains 6 Credits.

Description of Teaching and Learning Methods

Lectures (45%), exercises (45%), and independent reading (10%).

Requirements for participation and examination

Desirable prerequisites for participation in the courses:

Profound knowledge of geographical data and linear algebra, basic understanding in machine learning, and solid background and experience in object-oriented programming with Python.

Mandatory requirements for the module test application:

This module has no requirements.

Module completion

Grading

graded

Type of exam

Oral exam

Language

English

Duration/Extent

30 Minutes

Duration of the Module

The following number of semesters is estimated for taking and completing the module:
1 Semester.

This module may be commenced in the following semesters:
Wintersemester.

Maximum Number of Participants

This module is not limited to a number of students.

Registration Procedures

No information.

Recommended reading, Lecture notes

Lecture notes

Availability:  unavailable

 

Electronical lecture notes

Availability:  available

 

Literature

Recommended literature
No recommended literature given

Assigned Degree Programs


This module is used in the following Degree Programs (new System):

Studiengang / StuPOStuPOsVerwendungenErste VerwendungLetzte Verwendung
Environmental Planning (M. Sc.)110WiSe 2020/21SoSe 2024
Geodesy and Geoinformation Science (M. Sc.)128WiSe 2020/21SoSe 2024
Ökologie und Umweltplanung (B. Sc.)216WiSe 2020/21SoSe 2024
Ökologie und Umweltplanung (M. Sc.)18WiSe 2020/21SoSe 2024

Students of other degrees can participate in this module without capacity testing.

Miscellaneous

No information