Optimization Techniques in Computer Vision: Ill-Posed Problems and Regularization

Optimization Techniques in Computer Vision: Ill-Posed Problems and Regularization

Mongi A. Abidi , Andrei V. Gribok , Joonki Paik
Aún sin calificaciones
Dec 6, 2016 · Inglés · Kindle (511 páginas)
Añadir a la estantería

Califica este libro


Exportar diario de lectura

Detalles del libro

Formato Kindle
Páginas 511
Idioma Inglés
Publicado Dec 6, 2016
Editorial Springer

Descripción

This work delves into the intricacies of optimization methods tailored for the challenges of image processing and computer vision. The authors, Mongi A. Abidi, Andrei V. Gribok, and Joonki Paik, skillfully address the complexities that arise from ill-posed problems, providing insights into effective solutions.

Through a blend of theory and practical applications, the text serves as a resource for professionals and students alike, exploring regularization techniques that enhance the accuracy and efficiency of visual data interpretation. The authors emphasize a hands-on approach, ensuring that readers can apply the concepts directly to real-world scenarios.

The clarity and depth of the material make it an essential guide for anyone aiming to navigate the evolving landscape of computer vision. As the field continues to advance, this book serves as a foundational stepping stone, equipping readers with the necessary tools to tackle contemporary challenges.
Añadir a la estantería

Califica este libro


Exportar diario de lectura