Artificial Intelligence in Sound Analysis: Methods, Applications, and Future Directions

Deadline for Manuscript Submissions: October 31, 2025

 

 

    Special Issue Editors

     

     

    Assoc.Prof.Dr. Burak Taşcı  Website  E-Mail: btasci@firat.edu.tr

    Fırat University, Turkey

    Interests: Artificial Intelligence; Deep Learning; Biomedical Signal Processing

     

     

    Assoc.Prof.Dr. Türker Tuncer  Website  E-Mail: turkertuncer@firat.edu.tr

    Fırat University, Turkey

    Interests: Feature Engineering; Image Processing; Signal Processing; Information Security; Pattern Recognition

     

     

    Prof.Dr. Şengül Doğan Website  E-Mail: sdogan@firat.edu.tr

    Fırat University, Turkey

    Interests: Computer Forensics; Mobile Forensics; Image Processing; Signal Processing

     

     

    Special Issue Information

    Dear colleagues,

    Recent advancements in artificial intelligence (AI), particularly deep learning and feature engineering, have led to a transformation in the way we analyze sound and vibration data. AI techniques are now widely applied to a range of acoustic domains — from industrial fault detection and environmental sound monitoring to medical diagnostics and speech processing.

    This special issue aims to bring together cutting-edge research on the integration of AI in sound analysis, spanning novel methodologies, real-world applications, and theoretical insights. Contributions from academia and industry are welcome, particularly those that demonstrate the practical impact of intelligent systems on sound and vibration processing.

    We encourage submissions from multidisciplinary teams and underrepresented regions to ensure a broad, diverse, and inclusive exploration of this dynamic field.

     Contributions across a wide spectrum of topics are encouraged, including but not limited to:

    •  Deep learning models for sound classification and anomaly detection
    •  Explainable AI (XAI) methods in acoustic signal interpretation
    •  Intelligent systems for audio-based diagnostics (e.g., respiratory, cardiac, neurological)
    •  Sound-based monitoring in structural health, smart cities, and industrial systems
    •  Multimodal fusion with vibration, pressure, or biomedical signals
    •  AI-assisted auscultation and automated diagnosis
    •  Acoustic event detection using lightweight or embedded AI models
    •  Feature engineering and selection in audio signal processing
    •  Speech and vocal disorder detection using machine learning
    •  Simulation and synthetic data generation for training AI models in sound

     

     

    Keywords

    Artificial intelligence

    machine learning

    sound analysis

    deep learning

    acoustic diagnostics

    explainable AI

    audio signal processing

    biomedical acoustics

    feature engineering

    vibration analysis

    real-time systems

    speech and health