Join our mailing list
Get exclusive deals and learn about new products!
Reliable shipping
Flexible returns
Integrate machine learning and AI-based approaches into practical image processing with Python
Engineers and researchers implementing image processing systems need methods that bridge classical techniques with modern machine learning approaches. This book delivers both traditional and modern AI-based methods and algorithms in image enhancement, restoration, segmentation, compression, and analysis. Written by an educator and researcher with more than 40 years’ experience in signal/image processing and machine learning, this reference provides theoretical and practical tools using the Python platform for a wide range of applications.
The book consists of twenty chapters covering fundamental and advanced topics including two-dimensional image modeling, wavelet transform, Kalman filters, image reconstruction and computerized tomography, layered machines, linear and nonlinear autoencoders, and associative memories. Each chapter includes practical examples demonstrating real-world applications, supported by Python code, solution manuals, and presentation materials. The treatment progresses from foundational methods suitable for senior undergraduates to research-level content for graduate students and researchers.
This book also covers:
Essential for professionals in industry and research laboratories requiring implementation-ready image processing methods, this reference also serves graduate students and advanced undergraduates in electrical and computer engineering, biomedical engineering, and computer science programs studying digital image processing and computer vision.
Published by: Wiley
Publication Date: 2026-10-12
Format: Hardcover
ISBN-13: 9781394240449
DOI:
Dimensions: cm xcm
Pages: