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Dive into the cutting-edge integration of deep learning with audio signal processing in this authoritative guide. Designed for audio engineers, data scientists, and tech enthusiasts, this book demystifies the complex world of deep neural networks, including CNNs and RNNs, and their applications in speech recognition, music transcription, and sound event detection.
Explore the practical side of deep learning with hands-on tutorials using TensorFlow and PyTorch, building your intuition for model architectures and hyperparameter tuning. Gain insights into real-world deployment challenges, from data preprocessing to model evaluation, interpretability, and scalability. Industry case studies and best practices illuminate the path to building efficient and effective deep learning-based audio systems.
This book empowers you with the knowledge to leverage the full potential of deep learning in audio processing, offering a comprehensive resource for tackling sophisticated audio tasks. Whether you're a researcher, engineer, or enthusiast, this guide is your key to mastering the synergy of audio signal processing and deep learning, ensuring you approach audio-related challenges with confidence and proficiency.
"Chapter1-Introduction".- "Chapter2-Traditional Representation of Audio Signals".- "Chapter3-Machine Learning Methods for Audio Signals".- "Chapter4-Semi-Supervised Learning for Audio Signal".- "Chapter5-Self-Supervised Learning for Audio Signal".- "Chapter 6: Active Learning for Audio Signal".- "Chapter 7: Incremental Learning for Audio Signal Processing".- "Chapter 8: Few-Shot Learning for Audio Signal Processing".- "Chapter 9: Data Augmentation for Audio Signal".- "Chapter 10: Audio Classification".- "Chapter 11: Sound Source Localization".- "Chapter 12: Anomalous Sound Detection".- "Chapter 13: Audio Source Separation".- "Chapter 14: Audio Generation".- "Chapter 15: Audio-language Learning".- "Chapter 16: Audio-visual Signal Analysis".- "Chapter 17: Audio super-resolution".- "Chapter 18: EEG Auditory Decoding".- "Chapter 19: Audio Denosing".- "Chapter 20: Underwater Acoustics".- "Chapter 21: Urban Sound".- "Chapter 22: Industry Sound".- "Chapter 23: Medical Sound".- "Chapter 24: Bioacoustics".- "Chapter 25: Future Perspective".
Kele Xu is an Associate Professor at National University of Defense Technology China. His current research interests include Multimodal Machine Learning and Software Engineering. He is also interested in the applications of machine learning for audio signal processing, speech processing. During his part-time, he is a competition-driven researcher. I have won many data mining / machine learning competitions during last years, including ACM KDD Cup, Kaggle, Tianchi and CCF BDCI (CCF Big Data Computing Intelligence Contest). He is also a Kaggle Grandmaster.


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