Topological data analysis of human vowels: Persistent homologies across representation spaces
Guillem Bonafos, Jean-Marc Freyermuth, Pierre Pudlo, Samuel, Tron\c{c}on, Arnaud Rey

TL;DR
This study explores how different signal representations affect topological data analysis of human vowels, demonstrating that combining topological signatures with traditional features improves classification accuracy.
Contribution
It is the first to compare the impact of various signal representations on topological signatures in vowel classification tasks.
Findings
Spectrogram zeros provide the best gender prediction improvement.
Topological signatures from different representations are complementary.
Topologically-augmented classifiers outperform traditional MFCC-based models.
Abstract
Topological Data Analysis (TDA) has been successfully used for various tasks in signal/image processing, from visualization to supervised/unsupervised classification. Often, topological characteristics are obtained from persistent homology theory. The standard TDA pipeline starts from the raw signal data or a representation of it. Then, it consists in building a multiscale topological structure on the top of the data using a pre-specified filtration, and finally to compute the topological signature to be further exploited. The commonly used topological signature is a persistent diagram (or transformations of it). Current research discusses the consequences of the many ways to exploit topological signatures, much less often the choice of the filtration, but to the best of our knowledge, the choice of the representation of a signal has not been the subject of any study yet. This paper…
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