Data representation: from multiscale transforms to neural networks

Document Type

Book

Publication Date

1-1-2023

Abstract

Transients in 1D/2D signals often carry critical information, and hence constitute useful features for analysis and inference. A 2D signal, for example, is visually represented as an image and typically contains spatially distributed geometrical shapes that can be characterized by edges that signal the transients from one object to other objects. The edges are the discontinuities in an image intensity function along curves, contours, or lines and can be more closely studied by zooming in to the most important isotropic or anisotropic features in an image. This is the multiscale analysis which is the primary focus of this chapter. Additionally, it covers some recent developments in integrating wavelet analysis with neural networks for a joint exploitation of their respective advantages in statistical inference applications. Aimed as a tutorial, this chapter provides a basic introduction, with some perspective and a somewhat high-level exposition of the theoretical frameworks of classical wavelets and anisotropic wavelets, as well as a discussion on the integration of wavelets into neural networks. Our main goal is to provide working knowledge of these tools, focusing on their discrete scenarios as well as their potential for applications in information sciences and image processing in general, rather than the deep theoretical aspects which may be found in the extensive bibliography.

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