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This unique text/reference presents a fresh look at nonlinear
processing through nonlinear eigenvalue analysis, highlighting how
one-homogeneous convex functionals can induce nonlinear operators
that can be analyzed within an eigenvalue framework. The text opens
with an introduction to the mathematical background, together with
a summary of classical variational algorithms for vision. This is
followed by a focus on the foundations and applications of the new
multi-scale representation based on non-linear eigenproblems. The
book then concludes with a discussion of new numerical techniques
for finding nonlinear eigenfunctions, and promising research
directions beyond the convex case. Topics and features: introduces
the classical Fourier transform and its associated operator and
energy, and asks how these concepts can be generalized in the
nonlinear case; reviews the basic mathematical notion, briefly
outlining the use of variational and flow-based methods to solve
image-processing and computer vision algorithms; describes the
properties of the total variation (TV) functional, and how the
concept of nonlinear eigenfunctions relate to convex functionals;
provides a spectral framework for one-homogeneous functionals, and
applies this framework for denoising, texture processing and image
fusion; proposes novel ways to solve the nonlinear eigenvalue
problem using special flows that converge to eigenfunctions;
examines graph-based and nonlocal methods, for which a TV
eigenvalue analysis gives rise to strong segmentation, clustering
and classification algorithms; presents an approach to generalizing
the nonlinear spectral concept beyond the convex case, based on
pixel decay analysis; discusses relations to other branches of
image processing, such as wavelets and dictionary based methods.
This original work offers fascinating new insights into established
signal processing techniques, integrating deep mathematical
concepts from a range of different fields, which will be of great
interest to all researchers involved with image processing and
computer vision applications, as well as computations for more
general scientific problems.
This unique text/reference presents a fresh look at nonlinear
processing through nonlinear eigenvalue analysis, highlighting how
one-homogeneous convex functionals can induce nonlinear operators
that can be analyzed within an eigenvalue framework. The text opens
with an introduction to the mathematical background, together with
a summary of classical variational algorithms for vision. This is
followed by a focus on the foundations and applications of the new
multi-scale representation based on non-linear eigenproblems. The
book then concludes with a discussion of new numerical techniques
for finding nonlinear eigenfunctions, and promising research
directions beyond the convex case. Topics and features: introduces
the classical Fourier transform and its associated operator and
energy, and asks how these concepts can be generalized in the
nonlinear case; reviews the basic mathematical notion, briefly
outlining the use of variational and flow-based methods to solve
image-processing and computer vision algorithms; describes the
properties of the total variation (TV) functional, and how the
concept of nonlinear eigenfunctions relate to convex functionals;
provides a spectral framework for one-homogeneous functionals, and
applies this framework for denoising, texture processing and image
fusion; proposes novel ways to solve the nonlinear eigenvalue
problem using special flows that converge to eigenfunctions;
examines graph-based and nonlocal methods, for which a TV
eigenvalue analysis gives rise to strong segmentation, clustering
and classification algorithms; presents an approach to generalizing
the nonlinear spectral concept beyond the convex case, based on
pixel decay analysis; discusses relations to other branches of
image processing, such as wavelets and dictionary based methods.
This original work offers fascinating new insights into established
signal processing techniques, integrating deep mathematical
concepts from a range of different fields, which will be of great
interest to all researchers involved with image processing and
computer vision applications, as well as computations for more
general scientific problems.
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