Sound Signal Synthesis with Auxiliary Classifier GAN, COVID-19 cough as an example
Yahya Sherif Solayman Mohamed Saleh, Ahmed Mohammed Dabbous, Lama Alkhaled, Hum Yan Chai, Muhammad Ehsan Rana, Hamam Mokayed

TL;DR
This paper uses an Auxiliary Classifier GAN to generate synthetic cough spectrograms, augmenting training data to improve COVID-19 detection accuracy from 72% to 75%.
Contribution
It introduces a method to synthesize conditioned cough spectrograms using ACGAN for data augmentation in COVID-19 detection.
Findings
Synthetic cough data improved classifier accuracy.
ACGAN effectively generates labeled spectrograms.
Insights into training challenges and data quality issues.
Abstract
One of the fastest-growing domains in AI is healthcare. Given its importance, it has been the interest of many researchers to deploy ML models into the ever-demanding healthcare domain to aid doctors and increase accessibility. Delivering reliable models, however, demands a sizable amount of data, and the recent COVID-19 pandemic served as a reminder of the rampant and scary nature of healthcare that makes training models difficult. To alleviate such scarcity, many published works attempted to synthesize radiological cough data to train better COVID-19 detection models on the respective radiological data. To accommodate the time sensitivity expected during a pandemic, this work focuses on detecting COVID-19 through coughs using synthetic data to improve the accuracy of the classifier. The work begins by training a CNN on a balanced subset of the Coughvid dataset, establishing a baseline…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Respiratory and Cough-Related Research · Phonocardiography and Auscultation Techniques
