Wavelet Advanced Methods
Multiresolution Analysis, Custom Wavelets, and Feature Engineering
Volume II-B advances beyond the applied discrete wavelet methods presented earlier in the series to examine wavelet representations that address limitations of standard decimated transforms. Emphasis is placed on shift-invariant analysis, phase-aware representations, continuous time–frequency methods, and the design of wavelets tailored to specific signal characteristics and analytical objectives.
This volume treats wavelets as representational tools rather than fixed algorithms, focusing on how advanced transforms and custom constructions can be selected, compared, and evaluated for complex data and learning-oriented tasks. Through reproducible Python workflows and carefully chosen examples, the chapters demonstrate how advanced wavelet methods support multiscale interpretation, improved stability, and feature extraction in modern signal analysis and machine learning contexts.
This volume covers:
- Maximal Overlap Discrete Wavelet Transform (MODWT) and multiresolution analysis
- MODWT Multiresolution Analysis (MODWTMRA)
- Dual-Tree Complex Wavelet Transform (DT-CWT)
- Continuous Wavelet Transform (CWT) from one-dimensional to multidimensional data
- Design and implementation of custom wavelets
- Wavelet-based feature extraction for machine learning applications
- Reproducible Python workflows for advanced wavelet analysis
Publication Details
- Author: Shouke Wei
- Publisher: Deepsim Press
- Series: Wavelet Transform in Practice · Volume II-B
- Format: PDF (Digital)
- Edition: First edition
- Print length: 446 pages
- Item Weight: PDF eBook-51.2 MB (53,733,091 bytes)
- Dimensions: 7.24 x 1.35 x 10.24 inches
- Language: English
- ISBN: 978-1-0699284-5-0
- DOI: 10.5281/zenodo.18820664
- Publication date: 03/03/2026
- Book 3 of 5: Wavelet Transform in Practice: From Theory to Production-Ready Python Applications

