Partitioning signal classes using transport transforms for data analysis and machine learning

08/08/2020
by   Akram Aldroubi, et al.
4

A relatively new set of transport-based transforms (CDT, R-CDT, LOT) have shown their strength and great potential in various image and data processing tasks such as parametric signal estimation, classification, cancer detection among many others. It is hence worthwhile to elucidate some of the mathematical properties that explain the successes of these transforms when they are used as tools in data analysis, signal processing or data classification. In particular, we give conditions under which classes of signals that are created by algebraic generative models are transformed into convex sets by the transport transforms. Such convexification of the classes simplify the classification and other data analysis and processing problems when viewed in the transform domain. More specifically, we study the extent and limitation of the convexification ability of these transforms under an algebraic generative modeling framework. We hope that this paper will serve as an introduction to these transforms and will encourage mathematicians and other researchers to further explore the theoretical underpinnings and algorithmic tools that will help understand the successes of these transforms and lay the groundwork for further successful applications.

READ FULL TEXT
research
09/15/2016

Transport-based analysis, modeling, and learning from signal and data distributions

Transport-based techniques for signal and data analysis have received in...
research
03/27/2017

Introduction To The Monogenic Signal

The monogenic signal is an image analysis methodology that was introduce...
research
02/28/2006

Functional dissipation microarrays for classification

In this article, we describe a new method of extracting information from...
research
09/21/2021

Signal Classification using Smooth Coefficients of Multiple wavelets

Classification of time series signals has become an important construct ...
research
04/04/2019

Geometry of the Hough transforms with applications to synthetic data

In the framework of the Hough transform technique to detect curves in im...
research
02/28/2021

An Introduction to Johnson-Lindenstrauss Transforms

Johnson–Lindenstrauss Transforms are powerful tools for reducing the dim...
research
01/18/2022

A Non-Expert's Introduction to Data Ethics for Mathematicians

I give a short introduction to data ethics. My focal audience is mathema...

Please sign up or login with your details

Forgot password? Click here to reset