The Signed Cumulative Distribution Transform for 1-D Signal Analysis and Classification

06/03/2021
by   Akram Aldroubi, et al.
21

This paper presents a new mathematical signal transform that is especially suitable for decoding information related to non-rigid signal displacements. We provide a measure theoretic framework to extend the existing Cumulative Distribution Transform [ACHA 45 (2018), no. 3, 616-641] to arbitrary (signed) signals on ℝ. We present both forward (analysis) and inverse (synthesis) formulas for the transform, and describe several of its properties including translation, scaling, convexity, linear separability and others. Finally, we describe a metric in transform space, and demonstrate the application of the transform in classifying (detecting) signals under random displacements.

READ FULL TEXT

page 4

page 15

research
07/16/2022

Signed Cumulative Distribution Transform for Parameter Estimation of 1-D Signals

We describe a method for signal parameter estimation using the signed cu...
research
07/21/2015

The Cumulative Distribution Transform and Linear Pattern Classification

Discriminating data classes emanating from sensors is an important probl...
research
04/30/2022

End-to-End Signal Classification in Signed Cumulative Distribution Transform Space

This paper presents a new end-to-end signal classification method using ...
research
04/05/2020

Random Sampling using k-vector

This work introduces two new techniques for random number generation wit...
research
07/28/2023

The Radon Signed Cumulative Distribution Transform and its applications in classification of Signed Images

Here we describe a new image representation technique based on the mathe...
research
06/09/2016

Inverse Mellin Transform of Holonomic Sequences

We describe a method to compute the inverse Mellin transform of holonomi...
research
04/07/2020

Radon cumulative distribution transform subspace modeling for image classification

We present a new supervised image classification method for problems whe...

Please sign up or login with your details

Forgot password? Click here to reset