Processing, Analyzing and Learning of Images, Shapes, and Forms: Part 2, Volume 20, surveys the contemporary developments relating to the analysis and learning of images, shapes and forms, covering mathematical models and quick computational techniques. Chapter cover Alternating Diffusion: A Geometric Approach for Sensor Fusion, Generating Structured TV-based Priors and Associated Primal-dual Methods, Graph-based Optimization Approaches for Machine Learning, Uncertainty Quantification and Networks, Extrinsic Shape Analysis from Boundary Representations, Efficient Numerical Methods for Gradient Flows and Phase-field Models, Recent Advances in Denoising of Manifold-Valued Images, Optimal Registration of Images, Surfaces and Shapes, and much more.
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1. Diffusion operators for multimodal data analysis Tal Shnitzer, Roy R. Lederman, Gi-Ren Liu, Ronen Talmon and Hau-tieng Wu 2. Intrinsic and extrinsic operators for shape analysis Yu Wang and Justin Solomon 3. Operator-based representations of discrete tangent vector fields Mirela Ben-Chen and Omri Azencot 4. Active contour methods on arbitrary graphs based on partial differential equations Christos Sakaridis, Nikos Kolotouros, Kimon Drakopoulos and Petros Maragos 5. Fast operator-splitting algorithms for variational imaging models: Some recent developments Roland Glowinski, Shousheng Luo and Xue-Cheng Tai 6. From active contours to minimal geodesic paths: New solutions to active contours problems by Eikonal equations Da Chen and Laurent D. Cohen 7. Computable invariants for curves and surfaces Oshri Halimi, Dan Raviv, Yonathan Aflalo and Ron Kimmel 8. Solving PDEs on manifolds represented as point clouds and applications Rongjie Lai and Hongkai Zhao 9. Tightening continuous relaxations for MAP inference in discrete MRFs: A survey Hariprasad Kannan, Nikos Komodakis and Nikos Paragios 10. Lagrangian methods for composite optimization Shoham Sabach and Marc Teboulle 11. Generating structured nonsmooth priors and associated primal-dual methods Michael Hintermuller and Kostas Papafitsoros 12. Graph-based optimization approaches for machine learning, uncertainty quantification and networks Andrea L. Bertozzi and Ekaterina Merkurjev 13. Survey of fast algorithms for Euler’s elastica-based image segmentation Sung Ha Kang, Xuecheng Tai and Wei Zhu 14. Recent advances in denoising of manifold-valued images R. Bergmann, F. Laus, J. Persch and G. Steidl 15. Image and surface registration Ke Chen, Lok Ming Lui and Jan Modersitzki 16. Metric registration of curves and surfaces using optimal control Martin Bauer, Nicolas Charon and Laurent Younes 17. Efficient and accurate structure preserving schemes for complex nonlinear systems Jie Shen
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Contemporary book on advanced developments in the field of learning processes in images, shapes and forms
Covers contemporary developments relating to the analysis and learning of images, shapes and forms Presents mathematical models and quick computational techniques relating to the topic Provides broad coverage, with sample chapters presenting content on Alternating Diffusion and Generating Structured TV-based Priors and Associated Primal-dual Methods
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Produktdetaljer

ISBN
9780444641403
Publisert
2019-10-15
Utgiver
Vendor
North-Holland
Vekt
1220 gr
Høyde
229 mm
Bredde
152 mm
Aldersnivå
P, 06
Språk
Product language
Engelsk
Format
Product format
Innbundet
Antall sider
706

Volume editor

Biographical note

Ron Kimmel is a Professor of Computer Science at the Technion where he holds the Montreal Chair in Sciences. He held a post-doctoral position at UC Berkeley and a visiting professorship at Stanford University. He has worked in various areas of image and shape analysis in computer vision, image processing, and computer graphics. Kimmel's interest in recent years has been non-rigid shape processing and analysis, medical imaging and computational biometry, numerical optimization of problems with a geometric flavor, and applications of metric geometry, deep learning, and differential geometry. Kimmel is an IEEE Fellow for his contributions to image processing and non-rigid shape analysis. He is an author of two books, an editor of one, and an author of numerous articles. He is the founder of the Geometric Image Processing Lab. and a founder and advisor of several successful image processing and analysis companies. Professor Tai Xue-Cheng is a member of the Department of Mathematics at the Hong Kong Baptist University, Hong Kong and also the University of Bergen of Norway. His research interests include Numerical partial differential equations, optimization techniques, inverse problems, and image processing. He is the winner for several prizes for his contributions to scientific computing and innovative researches for image processing. He served as organizing and program committee members for many international conferences and has been often invited for international conferences. He has served as referee and reviewers for many premier conferences and journals.