Your email was sent successfully. Check your inbox.

An error occurred while sending the email. Please try again.

Proceed reservation?

Export
Filter
Type of Medium
Language
Region
Library
Years
Person/Organisation
  • 1
    Online Resource
    Online Resource
    San Rafael, California : Morgan & Claypool | Cham : Springer International Publishing
    UID:
    gbv_1657252825
    Format: 1 Online-Ressource (1 PDF (xiii, 156 pages)) , illustrations.
    Edition: 1st ed. 2018.
    ISBN: 9783031018206
    Series Statement: Synthesis lectures on computer vision 2153-1064 # 13
    Content: Part I. Covariance matrices and applications -- 1. Data representation by covariance matrices -- 1.1 Covariance matrices for data representation -- 1.2 Statistical interpretation -- 2. Geometry of SPD matrices -- 2.1 Euclidean distance -- 2.2 Interpretations and motivations for the different invariances -- 2.3 Basic Riemannian geometry -- 2.4 Affine-invariant Riemannian metric on SPD matrices -- 2.4.1 Connection with the Fisher-Rao metric -- 2.5 Log-Euclidean metric -- 2.5.1 Log-Euclidean distance as an approximation of the affine-invariant Riemannian distance -- 2.5.2 Log-Euclidean distance as a Riemannian distance -- 2.5.3 Log-Euclidean vs. Euclidean -- 2.6 Bregman divergences -- 2.6.1 Log-determinant divergences -- 2.6.2 Connection with the RĐenyi and Kullback-Leibler divergences -- 2.7 Alpha-Beta Log-Det divergences -- 2.8 Power Euclidean metrics -- 2.9 Distances and divergences between empirical covariance matrices -- 2.10 Running time comparison -- 2.11 Summary -- 3. Kernel methods on covariance matrices -- 3.1 Positive definite kernels and reproducing kernel Hilbert spaces -- 3.2 Positive definite kernels on SPD matrices -- 3.2.1 Positive definite kernels with the Euclidean metric -- 3.2.2 Positive definite kernels with the log-Euclidean metric -- 3.2.3 Positive definite kernels with the symmetric Stein divergence -- 3.2.4 Positive definite kernels with the affine-invariant Riemannian metric -- 3.3 Kernel methods on covariance matrices -- 3.4 Experiments on image classification -- 3.4.1 Datasets -- 3.4.2 Results -- 3.5 Related approaches --
    Content: Part II. Covariance operators and applications -- 4. Data representation by covariance operators -- 4.1 Positive definite kernels and feature maps -- 4.2 Covariance operators in RKHS -- 4.3 Data representation by RKHS covariance operators -- 5. Geometry of covariance operators -- 5.1 Hilbert-Schmidt distance -- 5.2 Riemannian distances between covariance operators -- 5.2.1 The affine-invariant Riemannian metric -- 5.2.2 Log-Hilbert-Schmidt metric -- 5.3 Infinite-dimensional alpha log-determinant divergences -- 5.4 Summary -- 6. Kernel methods on covariance operators -- 6.1 Positive definite kernels on covariance operators -- 6.1.1 Kernels defined using the Hilbert-Schmidt metric -- 6.1.2 Kernels defined using the log-Hilbert-Schmidt metric -- 6.2 Two-layer kernel machines -- 6.3 Approximate methods -- 6.3.1 Approximate log-Hilbert-Schmidt distance and approximate affine-invariant Riemannian distance -- 6.3.2 Computational complexity -- 6.3.3 Approximate log-Hilbert-Schmidt inner product -- 6.3.4 Two-layer kernel machine with the approximate log-Hilbert-Schmidt distance -- 6.3.5 Case study: approximation by Fourier feature maps -- 6.4 Experiments in image classification -- 6.5 Summary -- 7. Conclusion and future outlook --
    Content: A. Supplementary technical information -- Mean squared errors for empirical covariance matrices -- Matrix exponential and principal logarithm FrĐechet derivative -- The quasi-random Fourier features -- Low-discrepancy sequences -- The Gaussian case -- Proofs of several mathematical results -- Bibliography -- Authors' biographies
    Content: Covariance matrices play important roles in many areas of mathematics, statistics, and machine learning, as well as their applications. In computer vision and image processing, they give rise to a powerful data representation, namely the covariance descriptor, with numerous practical applications. In this book, we begin by presenting an overview of the finite-dimensional covariance matrix representation approach of images, along with its statistical interpretation. In particular, we discuss the various distances and divergences that arise from the intrinsic geometrical structures of the set of Symmetric Positive Definite (SPD) matrices, namely Riemannian manifold and convex cone structures. Computationally, we focus on kernel methods on covariance matrices, especially using the Log-Euclidean distance. We then show some of the latest developments in the generalization of the finite-dimensional covariance matrix representation to the infinite-dimensional covariance operator representation via positive definite kernels. We present the generalization of the affine-invariant Riemannian metric and the Log-Hilbert-Schmidt metric, which generalizes the Log-Euclidean distance. Computationally, we focus on kernel methods on covariance operators, especially using the Log-Hilbert-Schmidt distance. Specifically, we present a two-layer kernel machine, using the Log-Hilbert-Schmidt distance and its finite-dimensional approximation, which reduces the computational complexity of the exact formulation while largely preserving its capability. Theoretical analysis shows that, mathematically, the approximate Log-Hilbert-Schmidt distance should be preferred over the approximate Log-Hilbert-Schmidt inner product and, computationally, it should be preferred over the approximate affine-invariant Riemannian distance. Numerical experiments on image classification demonstrate significant improvements of the infinite-dimensional formulation over the finite-dimensional counterpart. Given the numerous applications of covariance matrices in many areas of mathematics, statistics, and machine learning, just to name a few, we expect that the infinite-dimensional covariance operator formulation presented here will have many more applications beyond those in computer vision
    Note: Part of: Synthesis digital library of engineering and computer science. - Includes bibliographical references (pages 143-154). - Compendex. INSPEC. Google scholar. Google book search. - Title from PDF title page (viewed on November 22, 2017)
    Additional Edition: ISBN 9783031000775
    Additional Edition: ISBN 9783031006920
    Additional Edition: ISBN 9783031029486
    Additional Edition: Erscheint auch als Druck-Ausgabe ISBN 9783031000775
    Additional Edition: Erscheint auch als Druck-Ausgabe ISBN 9783031006920
    Additional Edition: Erscheint auch als Druck-Ausgabe ISBN 9783031029486
    Language: English
    Library Location Call Number Volume/Issue/Year Availability
    BibTip Others were also interested in ...
Did you mean 9783030010775?
Did you mean 9783030007751?
Did you mean 9783030007775?
Close ⊗
This website uses cookies and the analysis tool Matomo. Further information can be found on the KOBV privacy pages