Zijiang Yang(Chair of Embedded Intelligence for Health Care and Wellbeing, University of Augsburg, Germany), Shuo Liu(Chair of Embedded Intelligence for Health Care and Wellbeing,University of Augsburg, Germany), Meishu Song(Univeristy of Augsburg), Emilia Parada-Cabaleiro(Complutense University of Madrid) and Björn Schuller(University of Augsburg / Imperial College London)
Abstract:
Every year, respiratory diseases affect millions of people worldwide, becoming
one of the main causes of death in nowadays society. Currently, the COVID-19---known as a novel respiratory illness---has triggered a global health crisis, which has been identified as the greatest challenge of our time since the Second World War. COVID-19 and many other respiratory diseases present often common symptoms, which impairs their early diagnosis; thus, restricting their prevention and treatment. In this regard, in order to encourage a faster and more accurate detection of these kinds of diseases, the automatic identification of respiratory illness through the application of machine learning methods is a very promising area of research aimed to support clinicians. With this in mind, we apply attention-based Convolutional Neural Networks for the recognition of adventitious respiratory cycles on the International Conference on Biomedical Health Informatics 2017 challenge database. Experimental results indicate that the architecture of residual networks with attention mechanism achieves a significant improvement w.r.t. the baseline models.