posted by user: lerch || 13307 views || tracked by 9 users: [display]

ML4Music 2021 : Special Issue: Machine Learning Applied to Music/Audio Signal Processing (Electronics)

FacebookTwitterLinkedInGoogle

Link: https://www.mdpi.com/journal/electronics/special_issues/music_audio_signal
 
When N/A
Where N/A
Submission Deadline Feb 28, 2021
Categories    audio   music   machine learning   signal processing
 

Call For Papers

The applications of audio and music processing range from music discovery and recommendation systems over speech enhancement, audio event detection, and music transcription, to creative applications such as sound synthesis and morphing.

The last decade has seen a paradigm shift from expert-designed algorithms to data-driven approaches. Machine learning approaches, and Deep Neural Networks specifically, have been shown to outperform traditional approaches on a large variety of tasks including audio classification, source separation, enhancement, and content analysis. With data-driven approaches, however, came a set of new challenges. Two of these challenges are training data and interpretability. As supervised machine learning approaches increase in complexity, the increasing need for more annotated training data can often not be matched with available data. The lack of understanding of how data are modeled by neural networks can lead to unexpected results and open vulnerabilities for adversarial attacks.

The main aim of this Special Issue is to seek high-quality submissions that present novel data-driven methods for audio/music signal processing and analysis and address main challenges of applying machine learning to audio signals. Within the general area of audio and music information retrieval as well as audio and music processing, the topics of interest include, but are not limited to, the following:

- unsupervised and semi-supervised systems for audio/music processing and analysis
- machine learning methods for raw audio signal analysis and transformation
- approaches to understanding and controlling the behavior of audio processing systems such as visualization, auralization, or regularization methods
- generative systems for sound synthesis and transformation
- adversarial attacks and the identification of 'deepfakes' in audio and music
- audio and music style transfer methods
- audio recording and music production parameter estimation
- data collection methods, active learning, and interactive machine learning for data-driven approaches

Dr. Peter Knees
Dr. Alexander Lerch

Related Resources

IEA/AIE 2027 2027   The 40th International Conference on Industrial, Engineering & Other Applications of Applied Intelligent Systems
Ei/Scopus-AI2A 2026   2026 IEEE 6th International Conference on Artificial Intelligence, Automation and Algorithms (AI2A 2026)
AAIML 2027   IEEE--2027 2nd International Conference on Advances in Artificial Intelligence and Machine Learning
ACML 2026   18th Asian Conference on Machine Learning
Ei/Scopus-ACEPE 2026   2026 3rd IEEE Asia Conference on Advances in Electrical and Power Engineering (ACEPE 2026)
MICAI 2026   25th Mexican International Conference on Artificial Intelligence
IEEE-MLNLP 2026   2026 IEEE 9th International Conference on Machine Learning and Natural Language Processing (MLNLP 2026)
ICTAI 2026   International Conference on Tools with Artificial Intelligence
IBCOM 2026   7th International Conference on IoT, Blockchain & Cloud Computing
ICDM Applied Track 2026   IEEE International Conference on Data Mining — Applied Track 2026