Atsiliepimai
Aprašymas
Richly supplemented one-semester textbook on intermediate/advanced image processing
Image Processing with Python introduces a novel approach to image processing methods, combining the foundational and deep learning approaches. It integrates neuroscientific findings with mathematical formalism and practical implementation techniques and seamlessly blends insights from neuroscience and mathematical concepts.
The book is enriched with practical Python programs, allowing readers to run and observe the output of many image processing methods, such as sampling, quantization, interpolation, filtering in spatial and transform domains, histogram operations, morphological operations, boundary extraction, object detection, and image segmentation. Readers can adjust these programs and change various parameters to observe the practical implications of the theoretical representations.
The book is organized into four abstraction levels:
This book is an excellent resource for a diverse audience of students and professionals across disciplines who work in designing and implementing image processing algorithms to address both theoretical and practical challenges. Pre-requisites include calculus, probability theory, linear algebra, and programming skills.
Richly supplemented one-semester textbook on intermediate/advanced image processing
Image Processing with Python introduces a novel approach to image processing methods, combining the foundational and deep learning approaches. It integrates neuroscientific findings with mathematical formalism and practical implementation techniques and seamlessly blends insights from neuroscience and mathematical concepts.
The book is enriched with practical Python programs, allowing readers to run and observe the output of many image processing methods, such as sampling, quantization, interpolation, filtering in spatial and transform domains, histogram operations, morphological operations, boundary extraction, object detection, and image segmentation. Readers can adjust these programs and change various parameters to observe the practical implications of the theoretical representations.
The book is organized into four abstraction levels:
This book is an excellent resource for a diverse audience of students and professionals across disciplines who work in designing and implementing image processing algorithms to address both theoretical and practical challenges. Pre-requisites include calculus, probability theory, linear algebra, and programming skills.
Atsiliepimai