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Parametric and geometric PDE-based models for automatic image segmentation,. (English) Zbl 07562896

MSC:

68U10 Computing methodologies for image processing
94A08 Image processing (compression, reconstruction, etc.) in information and communication theory
93E11 Filtering in stochastic control theory
60G35 Signal detection and filtering (aspects of stochastic processes)
35A15 Variational methods applied to PDEs
35-XX Partial differential equations
35Kxx Parabolic equations and parabolic systems
35K10 Second-order parabolic equations
35K55 Nonlinear parabolic equations
35Lxx Hyperbolic equations and hyperbolic systems
35L70 Second-order nonlinear hyperbolic equations
14Jxx Surfaces and higher-dimensional varieties
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