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Einrichtungen >> Technische Fakultät (TF) >> Verwaltung und Serviceeinrichtungen Technische Fakultät >> MAOT - Master Programme in Advanced Optical Technologies (Elitestudiengang) >>

Geschäftsstelle MAOT

 

Advanced Laser

Dozent/in:
Nicolas Joly
Angaben:
Vorlesung mit Übung, 4 SWS, Schein, ECTS: 5
Termine:
Fr, 12:30 - 16:30, AOT-Kursraum
Einzeltermin am 21.4.2020, 9:00 - 12:00, AOT-Kursraum
Studienrichtungen / Studienfächer:
WPF AOT-GL 2-3
Voraussetzungen / Organisatorisches:
Due to the corona virus situation the courses will be conducted as an e-learning course. Please go to the StudOn-link provided below for more information.
Inhalt:
  • Z-cavity
  • Dispersion management for ultra-short pulse generation

  • Various technique of characterisation of ultra-short pulses

  • Polarisation effects and Jones’ formalism

  • Semi-classical model for a laser (Maxwell-Bloch equations)

The rest of the lecture will consist of seminar presented by the students on the topics of their choice. These topics should cover a particular aspect (fundamental, theoretical, applied) of a laser system or an application of laser (e.g. optical tweezer, high-precision metrology, high-resolution spectroscopy… etc)

 

Clinical Application of Advanced Optical Technologies and Associated Fundamentals in Anatomy [Human Anatomy & Physiology]

Dozentinnen/Dozenten:
Rittika Chunder, Michael Eichhorn
Angaben:
Vorlesung, 4 SWS, für Anfänger geeignet, nur Fachstudium
Termine:
Zeit/Ort n.V.
Studienrichtungen / Studienfächer:
WPF AOT-GL ab 1
WPF MT-MA ab 1
PF CE-MA-TA-ME ab 1
Inhalt:
Because of the Covid-19 pandemia no lectures in lecture rooms will be offered. Instead of, information will be provided via StudOn as online lectures and slide presentations. In addition on StudOn also a forum for discussion will be organized and maintained.

 

Computer Vision [CV]

Dozentinnen/Dozenten:
Ronak Kosti, Marc Stamminger, Vincent Christlein
Angaben:
Vorlesung, 2 SWS, ECTS: 2,5, nur Fachstudium
Termine:
Do, 16:15 - 17:45, 0.68
Studienrichtungen / Studienfächer:
WPF INF-MA ab 1
WF ICT-MA-MPS ab 1
WF CME-MA ab 1
Inhalt:
This lecture discusses important algorithms from the field of computer vision. The emphasis lies on 3-D vision algorithms, covering the geometric foundations of computer vision, and central algorithms such as stereo vision, structure from motion, optical flow, and 3-D multiview reconstruction. The course will also introduce Convolutional Neural Networks (with some examples to play around) and discuss it's importance and impact. Participants of this advanced course are expected to bring experience from prior lectures either from the field of pattern recognition or from the field of computer graphics.

Due to the unfortunate situation with the coronavirus (as of April 2020), it is not possible to start the course in the traditional face-to-face manner. We start with an 'inverted classroom' approach, where we pre-record lectures and upload them. Students are required to watch them before the actual lecture period.

The actual lecture period (over Zoom) is dedicated to solving doubts and answering queries that students might have for the lectures watched.

Empfohlene Literatur:
Richard Szeliski: Computer Vision: Algorithms and Applications, Springer 2011.

Richard Hartley and Andrew Zisserman: Multiple view geometry in Computer Vision. Cambridge university press, 2003.

Schlagwörter:
computer vision; stereo vision; structure from motion; multi-view reconstruction; convolutional neural networks

 

Computer Vision Exercise [CV-E]

Dozentinnen/Dozenten:
Prathmesh Madhu, Darius Rückert
Angaben:
Übung, 2 SWS, ECTS: 2,5, nur Fachstudium, Check StudOn: https://www.studon.fau.de/studon/ilias.php?ref_id=2944507&cmd=frameset&cmdClass=ilrepositorygui&cmdNode=yl&baseClass=ilRepositoryGUI
Termine:
Zeit/Ort n.V.
Studienrichtungen / Studienfächer:
WPF INF-MA ab 1
WF ICT-MA-MPS ab 1
Schlagwörter:
computer vision; stereo vision; structure from motion; multi-view reconstruction; convolutional neural networks

 

Deep Learning [DL]

Dozentinnen/Dozenten:
Andreas Maier, Katharina Breininger
Angaben:
Vorlesung, 2 SWS, ECTS: 2,5, nur Fachstudium, Information regarding the online teaching will be added to the studon course
Termine:
Mo, 14:15 - 15:45, H4
Studienrichtungen / Studienfächer:
WPF INF-MA ab 1
WPF MT-MA-BDV 1
Voraussetzungen / Organisatorisches:
The following lectures are recommended:
  • Introduction to Pattern Recognition (IntroPR)

  • Pattern Recognition (PR)

Application via https://www.studon.fau.de/crs2898025.html

Inhalt:
Deep Learning (DL) has attracted much interest in a wide range of applications such as image recognition, speech recognition and artificial intelligence, both from academia and industry. This lecture introduces the core elements of neural networks and deep learning, it comprises:
  • (multilayer) perceptron, backpropagation, fully connected neural networks

  • loss functions and optimization strategies

  • convolutional neural networks (CNNs)

  • activation functions

  • regularization strategies

  • common practices for training and evaluating neural networks

  • visualization of networks and results

  • common architectures, such as LeNet, Alexnet, VGG, GoogleNet

  • recurrent neural networks (RNN, TBPTT, LSTM, GRU)

  • deep reinforcement learning

  • unsupervised learning (autoencoder, RBM, DBM, VAE)

  • generative adversarial networks (GANs)

  • weakly supervised learning

  • applications of deep learning (segmentation, object detection, speech recognition, ...)

The accompanying exercises will provide a deeper understanding of the workings and architecture of neural networks.

Empfohlene Literatur:
  • Ian Goodfellow, Yoshua Bengio, Aaron Courville: Deep Learning. MIT Press, 2016
  • Christopher Bishop: Pattern Recognition and Machine Learning, Springer Verlag, Heidelberg, 2006

  • Yann LeCun, Yoshua Bengio, Geoffrey Hinton: Deep learning. Nature 521, 436–444 (28 May 2015)

Schlagwörter:
deep learning; machine learning

 

Deep Learning Exercises [DL E]

Dozentinnen/Dozenten:
Katharina Breininger, Sulaiman Vesal, Florian Thamm, Felix Denzinger, Hendrik Schröter
Angaben:
Übung, 2 SWS, ECTS: 2,5, nur Fachstudium, This course will be held online until the coronavirus pandemic is contained to such an extent that the Bavarian state government can allow face-to-face teaching again. Information regarding the online teaching will be added to the studon course
Studienrichtungen / Studienfächer:
WPF INF-MA ab 1
Schlagwörter:
deep learning; machine learning

 
 
Mo12:00 - 14:000.01-142 CIP  Breininger, K.
Vesal, S.
Schröter, H.
 
 
 
Di18:00 - 20:000.01-142 CIP  Breininger, K.
Vesal, S.
Schröter, H.
 
 
 
Mi16:00 - 18:000.01-142 CIP  Breininger, K.
Vesal, S.
Schröter, H.
 
 
 
Do14:00 - 16:000.01-142 CIP  Breininger, K.
Vesal, S.
Schröter, H.
 
 
 
Fr8:00 - 10:000.01-142 CIP  Breininger, K.
Vesal, S.
Schröter, H.
 
 

Engineering of Solid State Lasers [ENGSSL]

Dozentinnen/Dozenten:
Martin Hohmann, Christoph Pflaum, Kristian Cvecek, Tobias Staudt
Angaben:
Vorlesung, 2 SWS, benoteter Schein, ECTS: 2,5, Weitere Infos / Further Informations in "Organisatorisches"
Termine:
Mi, 14:15 - 15:45, SR LPT 02.030
Studienrichtungen / Studienfächer:
WPF IP-BA 5-6
WPF MB-MA-IP 2
Voraussetzungen / Organisatorisches:
Ob der derzeitigen Situation wird diese Vorlesung vorerst in digitaler Form stattfinden - als Zoom-Webinar zum regulären Vorlesungszeitpunkt. Weitere Infos über den Fortgang finden Sie in der entsprechenden StudOn-Gruppe. Den Link zur StudOn-Gruppe finden Sie weiter unten.
Due to the current situation, this lecture will be tought in a digital manner for the time being - as a Zoom webinar at the scheduled time of the lecture. We will post further information on that in the corresponding StudOn group. The link to the StudOn group can be found in the following.
Inhalt:
The targeted audience is master level students who are interested in expanding their theoretical and practical knowledge in the field of solid state laser engineering. We recommend basic knowledge in optics.

 

Labcourse: Optical Material and Systems [OMS/LAB]

Dozent/in:
Nicolas Joly
Angaben:
Praktikum, 2 SWS, Schein, ECTS: 2,5, nur Fachstudium
Termine:
13:00 - 18:00, Raum n.V.
Due to the corona virus situation the course has to be postponed until the regulations allow it again.
Studienrichtungen / Studienfächer:
WPF AOT-GL ab 2

 

Labcourse: Optics in Medicine [OM]

Dozentinnen/Dozenten:
Daniel Gilbert, Florian Stelzle
Angaben:
Praktikum, 2 SWS, ECTS: 2,5
Termine:
Zeit n.V., AOT-Kursraum
Studienrichtungen / Studienfächer:
WPF AOT-GL ab 2

 

Laser Tissue Interaction [LTI]

Dozent/in:
Florian Klämpfl
Angaben:
Vorlesung, 2 SWS, ECTS: 2,5, Weitere Infos / Further Informations in "Organisatorisches"
Studienrichtungen / Studienfächer:
WPF AOT-GL 2
Voraussetzungen / Organisatorisches:
Ob der derzeitigen Situation wird diese Vorlesung vorerst in digitaler Form stattfinden - als Zoom-Webinar zum regulären Vorlesungszeitpunkt. Weitere Infos über den Fortgang finden Sie in der entsprechenden StudOn-Gruppe. Den Link zur StudOn-Gruppe finden Sie weiter unten.
Due to the current situation, this lecture will be tought in a digital manner for the time being - as a Zoom webinar at the scheduled time of the lecture. We will post further information on that in the corresponding StudOn group. The link to the StudOn group can be found in the following.
Inhalt:
The exercises for Laser Tissue Interaction are mandatory for this lecture!

 
 
Mo12:30 - 14:00AOT-Kursraum  Klämpfl, F. 
 

Laser Tissue Interaction Exercises [LTI-E]

Dozentinnen/Dozenten:
Benjamin Lengenfelder, Eric Eschner, Moritz Späth
Angaben:
Übung, 2 SWS, ECTS: 2,5, Weitere Infos / Further Informations in "Organisatorisches"
Termine:
Fr, 10:15 - 11:45, AOT-Bibliothek
Studienrichtungen / Studienfächer:
WPF AOT-GL 2
Voraussetzungen / Organisatorisches:
Ob der derzeitigen Situation wird diese Übung vorerst in digitaler Form stattfinden - als Zoom-Webinar zum regulären Übungszeitpunkt. Weitere Infos über den Fortgang finden Sie in der entsprechenden StudOn-Gruppe. Den Link zur StudOn-Gruppe finden Sie weiter unten.
Due to the current situation, this exercise will be tought in a digital manner for the time being - as a Zoom webinar at the scheduled time of the exercise. We will post further information on that in the corresponding StudOn group. The link to the StudOn group can be found in the following. Inhalt

 

Lasersystemtechnik 2 [LST2]

Dozentinnen/Dozenten:
Peter Hoffmann, Michael Rasch
Angaben:
Vorlesung, 2 SWS, Wahlfach Lasertechnik Vertiefung. Erster Termin am 23.04.20! Weitere Infos / Further Informations in "Organisatorisches"
Termine:
Do, 14:15 - 15:45, SR LPT 02.030
Studienrichtungen / Studienfächer:
WF MB-MA-FG3 1-3
WPF ME-BA-MG9 5-6
WPF ME-MA-MG9 1-3
WF WING-MA 1-3
WF BPT-MA-M 3-4
Voraussetzungen / Organisatorisches:
Ob der derzeitigen Situation wird diese Vorlesung vorerst in digitaler Form stattfinden - als Zoom-Webinar zum regulären Vorlesungszeitpunkt. Weitere Infos über den Fortgang finden Sie in der entsprechenden StudOn-Gruppe. Den Link zur StudOn-Gruppe finden Sie weiter unten.

 

Leuchtstoffe / Phosphors

Dozentinnen/Dozenten:
Miroslaw Batentschuk, Albrecht Winnacker
Angaben:
Vorlesung, 2 SWS, benoteter Schein, ECTS: 3, nur Fachstudium, VL findet über ZOOM statt. Zugangsdaten werden im studOn jede Woche hochgeladen.Anmeldung im StudOn ist erforderlich.
Termine:
Mo, 14:15 - 15:45, Raum n.V.
Vorbesprechung per live-ZOOM-Übertragung. Für alle VL, Seminare, Praktika etc. Findet als live-ZOOM-Übertragung statt. Registrieren Sie sich bitte für das entsprechnde Datum und die Uhrzeit: https://fau.zoom.us/meeting/register/tJUpce2trD0rGNzOM9GyJCKXI8iU5vxIUPFN . Nach der Registrierung erhalten Sie eine Bestätigungs-E-Mail mit Informationen über die Teilnahme am Meeting.
ab 11.5.2020
Vorbesprechung: Dienstag, 21.4.2020, 14:00 - 15:00 Uhr
Studienrichtungen / Studienfächer:
PF MWT-MA-WET 2
WPF MWT-MA-WET 2
WPF NT-MA 2
WPF AOT-GL 2

 

Light Scattering: Lecture [OM/LS]

Dozentinnen/Dozenten:
Andreas Paul Fröba, Michael Rausch
Angaben:
Vorlesung, 2 SWS, ECTS: 5, This lecture and the corresponding exercise are offered online via Zoom at the times stated in UnivIS as long as on-site attendence is not possible due to the Corona pandemic. First lecture is on Monday, April 20, 2020 at 18:15. For attending the lectures and the corresponding exercises, registration for the StudOn-course "Light Scattering" until April 19, 2020 at 12:00 a.m. is mandatory (https://www.studon.fau.de/crs2182923-join.html).
Termine:
Mo, 18:15 - 19:45, AOT-Kursraum
First lecture is on Monday, April 20, 2020 at 18:15.
ab 23.4.2020
Studienrichtungen / Studienfächer:
WPF AOT-GL 2-3

 

Light Scattering: Exercise [OM/LS-EX]

Dozentinnen/Dozenten:
Andreas Paul Fröba, Michael Rausch
Angaben:
Übung, 2 SWS, This exercise and the corresponding lecture are offered online via Zoom at the times stated in UnivIS as long as on-site attendence is not possible due to the Corona pandemic. First lecture is on Monday, April 20, 2020 at 18:15. For attending the lectures and the corresponding exercises, registration for the StudOn-course "Light Scattering" until April 19, 2020 at 12:00 a.m. is mandatory (https://www.studon.fau.de/crs2182923-join.html).
Termine:
Do, 14:15 - 15:45, AOT-Kursraum
Studienrichtungen / Studienfächer:
WPF AOT-GL 2-3

 

Linear and non-linear fibre optics [LinNLFO]

Dozent/in:
Bernhard Schmauss
Angaben:
Vorlesung, 2 SWS, Schein, ECTS: 5, nur Fachstudium, First lecture on April 22nd 2020; Online Course! - Please register in StudOn for further information.
Termine:
Mi, 16:15 - 17:45, HF-Technik: SR 5.14
Studienrichtungen / Studienfächer:
WPF AOT-GL ab 2
WPF CME-MA ab 1
WPF CE-MA-TA-PO ab 1
WF ASC-MA 1-4

 

Linear and non-linear fibre optics: Exercise [LinNLFO Ex]

Dozentinnen/Dozenten:
Lisa Härteis, Christian Carlowitz
Angaben:
Übung, 2 SWS, Online Course! - Please register in StudOn for further information.
Termine:
Do, 8:15 - 9:45, HF-Technik: BZ 6.18
Studienrichtungen / Studienfächer:
WPF AOT-GL ab 2
WPF CME-MA ab 1
WF ASC-MA 1-4
WPF CE-MA-TA-PO ab 1

 

Machine Learning for Physicists

Dozent/in:
Florian Marquardt
Angaben:
Vorlesung, 2 SWS, ECTS: 5, nur Fachstudium, die Vorlesung wird aufgrund der aktuellen Situation als "inverted classroom" angeboten, siehe zusätzliche Informationen - Due to the current situation, this lecture is moved to an "inverted classroom" format; see additional information; registration required: please follow zoom registration link on https://machine-learning-for-physicists.org
Termine:
Mi, 17:00 - 19:00, Raum n.V.
Studienrichtungen / Studienfächer:
WF Ph-BA ab 5
WF Ph-MA ab 1
WF PhM-BA ab 5
WF PhM-MA ab 1
Voraussetzungen / Organisatorisches:
This is a course introducing modern techniques of machine learning, especially deep neural networks, to an audience of physicists. Neural networks can be trained to perform diverse challenging tasks, including image recognition and natural language processing, just by training them on many examples. Neural networks have recently achieved spectacular successes, with their performance often surpassing humans. They are now also being considered more and more for applications in physics, ranging from predictions of material properties to analyzing phase transitions. We will cover the basics of neural networks, convolutional networks, autoencoders, restricted Boltzmann machines, and recurrent neural networks, as well as the recently emerging applications in physics. Prerequisites: almost none, except for matrix multiplication and the chain rule.

 

Machine Learning for Physicists (UE)

Dozentinnen/Dozenten:
Florian Marquardt, Assistenten
Angaben:
Übung, 1 SWS, nur Fachstudium, die Übung wird aufgrund der aktuellen Situation als "inverted classroom" angeboten, siehe zusätzliche Informationen - Due to the current situation, this seminar is moved to an "inverted classroom" format; see additional information
Termine:
Zeit/Ort n.V.
Studienrichtungen / Studienfächer:
WF Ph-BA ab 5
WF Ph-MA ab 1
WF PhM-BA ab 5
WF PhM-MA ab 1

 

MAOT Lab Course on Optical Material Processing [MAOT Lab Course]

Dozentinnen/Dozenten:
Tobias Staudt, Karen Schwarzkopf
Angaben:
Praktikum, For MAOT students only! Weitere Infos / Further Informations in "Organisatorisches"
Termine:
Introduction: "tbd". Schedule for the individual experiments will be discussed during the introductory event.
Voraussetzungen / Organisatorisches:
Ob der derzeitigen Situation wird das Praktikum (u. U. in Blockform) vermutlich zu einem späteren Zeitpunkt im Semester starten. Wir werden Sie an dieser Stelle sowie über die entsprechende StudOn-Gruppe über den Fortgang informieren. Den Link zur StudOn-Gruppe finden Sie weiter unten.
Due to the current situation, the lab course will start (possibly as a full-time block) later this semester. We will post further information on that here as well as in the corresponding StudOn group. The link to the StudOn group can be found in the following.

 

Medical Image Processing for Diagnostic Applications (VHB-Kurs) [MIPDA]

Dozentinnen/Dozenten:
Julian Hoßbach, Tristan Gottschalk, Lina Felsner
Angaben:
Vorlesung, 4 SWS, ECTS: 5
Termine:
Zeit/Ort n.V.
Studienrichtungen / Studienfächer:
WPF INF-MA ab 1
WPF INF-BA-V-ME ab 5
PF CE-MA-TA-IT ab 1
WPF IuK-MA-MMS-INF ab 1
WPF ICT-MA-MPS 1-4
WPF MT-MA-BDV ab 1
WPF MT-BA ab 5
WF CME-MA 1-4
Voraussetzungen / Organisatorisches:
Requirements: mathematics for engineering

Organization: This is an online course of Virtuelle Hochschule Bayern (VHB). Go to https://www.vhb.org to register to this course. FAU students register for the written exam via meinCampus.

Inhalt:
Medical imaging helps physicians to take a view inside the human body and therefore allows better treatment and earlier diagnosis of serious diseases.

However, as straightforward as the idea itself is, so diversified are the technical difficulties to overcome when implementing a clinically useful imaging device.

We begin this course by discussing all available modalities and the actual imaging goals which highly affect the imaging result.

Some modalities produce very noisy results, but there are multiple other artifacts that show up in raw acquisition data and have to be dealt with. We address these issues in the chapter preprocessing and show how to compensate for image distortions, how to interpolate defect pixels, and finally correct bias fields in magnetic resonance images.

The largest portion of this course covers the theory of medical image reconstruction. Here, from a set of projections from different viewing angles a 3-D image is merged that allows a definite localization of anatomical and pathological features. Following roughly the historical development of CT devices, we study the process from parallel beam to fan beam geometry and include a discussion of phantoms as a tool for calibration and image quality assessment. We then move forward and learn about reconstruction in 3-D. Since the system matrix often grows in dimensions such that many direct solvers become infeasible, we also discuss pros and cons of iterative methods.

In the final chapter, image registration is introduced as the concept of computing the mapping that maps the content of one image to another. Two different acquisitions usually result in images that are at least rotated and translated against each other. Image registration forms the set of tools that we need to match certain image features in order to align both images for further processing, image improvement or image overlays.

Schlagwörter:
Mustererkennung, Medizinische Bildverarbeitung

 

Medical Image Processing for Interventional Applications (VHB-Kurs) [MIPIA]

Dozentinnen/Dozenten:
Julian Hoßbach, Tristan Gottschalk, Lina Felsner
Angaben:
Vorlesung, 4 SWS, ECTS: 5
Termine:
Zeit/Ort n.V.
Studienrichtungen / Studienfächer:
WPF MT-BA ab 5
WPF INF-BA-V-ME 4-6
WPF INF-MA 1-4
WPF IuK-MA-MMS-INF 1-3
WPF ICT-MA-MPS 1-4
WF CE-MA-INF ab 1
WPF MT-MA-BDV 1-2
Voraussetzungen / Organisatorisches:
mathematics for engineering; This lecture focuses on interventional procedures. It is recommended but not necessary to attend Medical Image Processing for Diagnostic Applications (MIPDA) before.
Inhalt:
This lecture focuses on recent developments in image processing driven by medical applications. All algorithms are motivated by practical problems. The mathematical tools required to solve the considered image processing tasks will be introduced.

In addition to the lectures, we also offer exercise classes. The exercises consist of theoretical parts where you immerse in lecture topics. But we also set emphasis on the practical implementation of the methods.

Schlagwörter:
Mustererkennung, Medizinische Informatik, Medizinische Bildverarbeitung

 

Modern Optics 2: Nonlinear Optics (MO-2)

Dozentinnen/Dozenten:
Maria Chekhova, Birgit Stiller
Angaben:
Vorlesung, 2 SWS
Termine:
Mi, 10:00 - 11:30, SR 01.779
Studienrichtungen / Studienfächer:
WF Ph-BA ab 5
WF Ph-MA ab 1

 

Nano-Optics 2020

Dozent/in:
Peter Banzer
Angaben:
Vorlesung, 2,5 SWS, ECTS: 5, nur Fachstudium, Prüfung: mündlich
Termine:
Mi, 14:30 - 16:30, HD
Studienrichtungen / Studienfächer:
WF Ph-BA ab 5
WF Ph-MA ab 1
Inhalt:
Preliminary Table of Contents:
0. GENERAL CONCEPTS AND BUZZWORDS
1. NOTATIONS
2. A HISTORICAL VIEW ON NANO-OPTICS
3. BASICS AND FUNDAMENTALS
4. NONPARAXIAL PROPAGATION AND TIGHT FOCUSING
5. LIGHT-MATTER-INTERACTIONS AT THE NANOSCALE
6. MICROSCOPY AND NANOSCOPY
7. TRACTOR BEAMS AND OPTICAL TWEEZERS
8. SNEAK PEEK: THE WORLD OF PLASMONICS
9. NANOFABRICATION IN A NUTSHELL
Empfohlene Literatur:
Principles of Nano-Optics by Lukas Novotny and Bert Hecht, Cambridge University Press, ISBN: 978-1107005464
Schlagwörter:
Please register for this course via StudOn ((https://www.studon.fau.de/crs2865652_join.html; StudOn-ID: 2865652

 

Pattern Analysis [PA]

Dozent/in:
Christian Riess
Angaben:
Vorlesung, 3 SWS, benoteter Schein, ECTS: 3,75, This course will be held online until the coronavirus pandemic is contained to such an extent that the Bavarian state government can allow face-to-face teaching again
Termine:
Mi, 14:15 - 15:45, H16
Do, 16:15 - 17:45, H16
Studienrichtungen / Studienfächer:
PF MT-MA-BDV 1-4
WPF IuK-MA-MMS-INF 1-4
WPF ICT-MA-MPS 1-4
WPF CME-MA 1-4
WF CME-MA 1-4
WPF INF-MA 1-4
WPF CE-MA-INF ab 1
WF ASC-MA 1-4
Voraussetzungen / Organisatorisches:
Please join the class "Pattern Analysis" in studOn. All lecture material will be linked and made available there.
It is recommended (but not mandatory) that participants attend the lecture Pattern Recognition first.
Inhalt:
This lecture complements the lectures "Introduction to Pattern Recognition" and "Pattern Recognition". In this third edition, we focus on analyzing and simplifying feature representations. Major topics of this lecture are density estimation, clustering, manifold learning, hidden Markov models, conditional random fields, and random forests. The lecture is accompanied by exercises, where theoretical results are practically implemented and applied.
Empfohlene Literatur:
  • Christopher Bishop: Pattern Recognition and Machine Learning, Springer Verlag, Heidelberg, 2006
  • T. Hastie, R. Tibshirani, J. Friedman: The Elements of Statistical Learning, 2nd edition, Springer Verlag, 2017.

  • Antonio Criminisi and J. Shotton: Decision Forests for Computer Vision and Medical Image Analysis, Springer, 2013

  • papers referenced in the lecture

Schlagwörter:
pattern recognition, pattern analysis

 

Pattern Analysis Programming [PA-Prog]

Dozentinnen/Dozenten:
Dalia Rodriguez Salas, Mathias Seuret, Ronak Kosti
Angaben:
Übung, 1 SWS, ECTS: 1,25, This course will be held online until the coronavirus pandemic is contained to such an extent that the Bavarian state government can allow face-to-face teaching again
Studienrichtungen / Studienfächer:
WPF ICT-MA-MPS ab 1
WPF INF-MA ab 1
WPF MT-MA-BDV ab 1
WPF CME-MA ab 1
WPF CE-MA-INF ab 1
WPF IuK-MA-MMS-INF ab 1
WF ASC-MA ab 1
Voraussetzungen / Organisatorisches:
The exercise material is published in the studOn class for the lecture Pattern Analysis.
Inhalt:
Python programming exercises to supplement and practice the contents of the lecture Pattern Analysis.
Schlagwörter:
pattern analysis, programming

 
 
Di14:00 - 15:0002.151-113 a CIP, 02.151-113 b CIP  N.N. 
 
 
Di15:00 - 16:0002.151-113 a CIP, 02.151-113 b CIP  N.N. 
 
 
Fr08:15 - 09:45Übung 3 / 01.252-128  N.N. 
 

Praktikum in Thermophysikalische Eigenschaften von Arbeitsstoffen der Verfahrens- und Energietechnik - entfällt im Sommersemester 2020 [TPE-PR]

Dozentinnen/Dozenten:
Thomas Koller, Michael Rausch, Andreas Paul Fröba
Angaben:
Praktikum, 3 SWS, Schein, ECTS: 2,5, Das Praktikum findet im Sommersemester 2020 nicht statt. Es kann im Zusammenhang mit der im Sommersemester 2020 stattfindenden Vorlesung und Übung im Wintersemester 2020/2021 nachträglich besucht werden.
Termine:
Zeit/Ort n.V.
Studienrichtungen / Studienfächer:
WPF CBI-MA ab 1
WPF CEN-MA ab 1
WF LSE-MA ab 1
WPF ET-MA-VTE ab 1
Voraussetzungen / Organisatorisches:
Vorlesung und Übung in Thermophysikalische Eigenschaften von Arbeitsstoffen der Verfahrens- und Energietechnik

 

Quantum Physics of Light-Matter Interactions (UE)

Dozentinnen/Dozenten:
Claudiu Genes, Florian Marquardt
Angaben:
Übung, 1 SWS, nur Fachstudium
Termine:
Di, 11:00 - 12:00, SRTL (307)
ab 28.4.2020
Studienrichtungen / Studienfächer:
WF Ph-BA ab 5
WF Ph-MA ab 1
WF PhM-BA ab 5
WF PhM-MA ab 1

 

Quantum Physics of Light-Matter Interactions

Dozentinnen/Dozenten:
Claudiu Genes, Florian Marquardt
Angaben:
Vorlesung, 2 SWS, Spezialvorlesung
Termine:
Fr, 10:00 - 12:00, 308 TL
Studienrichtungen / Studienfächer:
WF Ph-BA ab 5
WF Ph-MA ab 1
WF PhM-BA ab 5
WF PhM-MA ab 1

 

Seminar on Solar Energy [SolSem]

Dozentinnen/Dozenten:
Christoph J. Brabec, Jens Hauch
Angaben:
Seminar, 2 SWS, benoteter Schein, ECTS: 2, nur Fachstudium, findet aus aktuellem Anlass mittels Zoom-Live-Übertragung statt. Anmeldung im StudOn ist erforderlich. Zugangsdaten zu ZOOM werden über StudOn mitgeteilt, auch für die Vorbesprechung.
Termine:
erster Termin 28.04.2020, 15:00 Uhr
Vorbesprechung: Dienstag, 21.4.2020, 14:00 - 15:00 Uhr
Studienrichtungen / Studienfächer:
WF CE-BA-SEM ab 5
WF ET-BA ab 5
PF AOT-GL 1
WF AOT-GL ab 1
WF ET-MA-MWT ab 1
WF CE-MA-SEM ab 1
WF INF-MA ab 1
WF MWT-MA-WET ab 1
WF NT-MA ab 1
Schlagwörter:
Solar Energy Seminar

 

Simulation Methods in Optics

Dozentinnen/Dozenten:
Norbert Lindlein, Nicolas Joly
Angaben:
Vorlesung mit Übung, 4 SWS, ECTS: 5
Termine:
Mo, 14:00 - 17:30, AOT-Kursraum
Studienrichtungen / Studienfächer:
WF Ph-BA ab 6
WF Ph-MA ab 1
WF LaP-SE ab 6
WF CE-BA-TW 6
WF AOT-GL ab 2
Inhalt:
1. Ray tracing: Principle and applications
2. Aberrations: which type of aberrations exist, how do they depend on the numerical aperture and the field angle
3. Diffraction and free space propagation by the angular spectrum of plane waves
4. Debye integral in scalar optics
5. Wave-optical scalar simulation methods: thin element approximation, BPM (mostly the simple paraxial one), WPM, some comments to numerical implementation
6. Waveguide theory (mode solver and evaluation of dispersion for various type of waveguides: step-index fibre, hollow-core PCF, filled with gas…)
7. Nonlinear propagation of pulses in fibre (typically, the resolution of the nonlinear Schrödinger equation so as to study the theory of integration and the split-step method)
8. Gaussian beam and ABCD matrices. (Object oriented programming)

 

Spectroscopy techniques applied to amorphous materials [SPEC]

Dozent/in:
Dominique de Ligny
Angaben:
Vorlesung, 2 SWS, ECTS: 3, Begin 24.04.20; The lectures will start by an overview of the light-matter interaction. Then it will be given an overview of spectroscopic methods that can be used to study amorphous materials: X-ray and neutron diffraction methods, X –Ray Absorption Spectroscopy, Optical spectroscopy : absoption and luminescence, Vibrational spectroscopies.
Termine:
Fr, 14:00 - 17:00, 0.15
Studienrichtungen / Studienfächer:
WF MWT-MA-GUK ab 1

 

Thermophysikalische Eigenschaften von Arbeitsstoffen der Verfahrens- und Energietechnik [TPE]

Dozentinnen/Dozenten:
Thomas Koller, Michael Rausch, Andreas Paul Fröba
Angaben:
Vorlesung mit Übung, 4 SWS, ECTS: 5, Veranstaltung findet online via Zoom zu den angegebenen Zeiten statt, solange aufgrund der Corona-Pandemie keine Präsenzveranstaltungen durchgeführt werden können. Die erste Vorlesung findet am 22.04.20 um 10:15 Uhr statt. Für eine Teilnahme ist eine Anmeldung für den StudOn-Kurs "Thermophysical Properties - Thermophysikalische Eigenschaften" bis zum 21.04. um 12:00 Uhr notwendig (Link: https://www.studon.fau.de/crs1525524_join.html). Das für dieses Fach optional angebotene Praktikum kann erst im Wintersemester 2020/2021 nachträglich besucht werden.
Termine:
Mi, Do, 10:15 - 11:45, AOT-Kursraum
Studienrichtungen / Studienfächer:
WF AOT-GL ab 1
WPF CBI-MA ab 1
WPF CEN-MA ab 1
WF LSE-MA ab 1
WPF ET-MA-VTE ab 1
WF MAP-SOFT ab 1



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