Digital Envelope Estimation Via Geometric Properties of an Arbitrary Real Signal
Carlos Tarjano, Valdecy Pereira

TL;DR
This paper introduces a geometric-based algorithm for digital envelope detection that automatically estimates the envelope of complex signals without manual parameter tuning, applicable across various real-world signals.
Contribution
The paper presents a novel envelope detection method using discrete curvature, eliminating the need for manual filter design and outperforming classic techniques.
Findings
Effective on diverse real-world signals
Eliminates manual parameter tuning
Provides physically plausible envelope estimates
Abstract
Envelope detection techniques have applications in areas like medicine, sound classification and synthesis, seismology and speech recognition. Nevertheless, a general approach to digital envelope detection of signals with rich spectral content doesn't exist, as most methods involve manual intervention, in the form of filter design, smoothing, and other specific design choices, based on prior knowledge of the signals under investigation. To address this problem, we propose an algorithm that uses intrinsic characteristics of a signal to estimate its envelope, eliminating the necessity of parameter tuning. The approach here described draws inspiration from geometric concepts to estimate the temporal envelope of an arbitrary signal; specifically, a new measure of discrete curvature is used to obtain the average radius of curvature of a discrete wave, that will serve as a threshold to…
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