bg-new

Machine Listening

Lecturer

Jakob Abesser, jakob.abesser@idmt.fraunhofer.de

Organizer/s

Fraunhofer IDMT

Content and organization

This short course includes 6 lectures on the topic of Machine Listening.
After two foundation lectures on audio signal representations and machine learning / deep learning, the course will provide an in-depth overview with 2 lectures on each of the application scenarios music information retrieval (music tagging, music similarity, tempo estimation, music transcription, instrument recognition, source separation) and environmental sound analysis (acoustic scene classification, sound event detection, and acoustic anomaly detection).
A special focus will be on deploying machine listening algorithms in real-life scenarios.

Course material will be soon provided on the accompanying website
https://machinelistening.github.io

Interested AIDA students can send an email with the subject “Enroll to Machine Listening Lecture” to jakob.abesser@idmt.fraunhofer.de until “Enroll on this course button” becomes operational.

Lecture 1: Introduction to Audio Representations.

Lecture 2: Introduction to Machine Learning.

Lecture 3: Music Information Retrieval 1/2.

Lecture 4: Music Information Retrieval 2/2.

Lecture 5: Environmental Sound Analysis 1/2.

Lecture 6: Environmental Sound Analysis 2/2.

Level

Graduate student course

Course Duration

Short course

Course Type

AI PhD Curriculum

Lecture Plan

6 lectures + 4 seminars

Schedule

Winter semester

Language

English

Modality (online/in person):

Online

Other short courses

10. 04. 2024 Go

Ethics & STICs

01. 03. 2024 Go

Computer Vision

24. 11. 2023 Go

Human Rights Toolbox

21. 02. 2023 Go

Computer Vision

11. 05. 2022 Go

Geometric learning

05. 04. 2022 Go

Computer Graphics

04. 04. 2022 Go

Bayesian Learning

02. 04. 2022 Go

Computer Graphics

31. 03. 2022 Go

Web of Data

28. 03. 2022 Go

Machine Learning

27. 03. 2022 Go

Machine Learning

02. 03. 2022 Go

Player Modeling

28. 02. 2022 Go

Player Modeling

21. 02. 2022 Go

Affective Computing

21. 02. 2022 Go

Machine Listening

21. 02. 2022 Go

Computer Vision

21. 02. 2022 Go

Computer Vision

21. 02. 2022 Go

Self-Driving Cars

21. 02. 2022 Go

Deep Learning

21. 02. 2022 Go

Deep Learning 2

09. 07. 2021 Go

Self-Driving Cars

09. 07. 2021 Go

Computer Vision

09. 07. 2021 Go

Deep Learning

17. 06. 2021 Go

Deep Learning School

17. 06. 2021 Go

Memory Network

02. 06. 2021 Go

Machine Listening

02. 06. 2021 Go

Affective Computing

02. 06. 2021 Go

Deep Learning 2

01. 06. 2021 Go

Computer Vision

Cookie Settings

A AIDA - AI Doctoral Academy may use cookies to remember your login data, collect statistics to optimize the functionality of the site and to perform marketing actions based on your interests.


These cookies are necessary to allow the main functionality of the website and are automatically activated when you use this website.
These cookies allow us to analyze the use of the website, so that we can measure and improve its performance.
Allow you to stay in touch with your social network, share content, send and post comments.

Required Cookies They allow you to personalize the commercial offers that are presented to you, directing them to your interests. They can be own or third party cookies. We warn you that, even if you do not accept these cookies, you will receive commercial offers, but without meeting your preferences.

Functional Cookies They offer a more personalized and complete experience, allow you to save preferences, show you content relevant to your taste and send you the alerts you have requested.

Advertising Cookies Allow you to stay in touch with your social network, share content, send and post comments.