Diverse Biosignals
Diverse biosignal research focuses on developing robust and reliable methods for acquiring, processing, and interpreting multiple physiological signals simultaneously to gain a more comprehensive understanding of human health and behavior. Current research emphasizes the use of deep learning models, including convolutional neural networks and transformers, often incorporating techniques like self-supervised learning and uncertainty quantification to improve model accuracy and robustness across varying conditions and data quality. This field is significant for advancing healthcare applications, such as improved diagnostics and personalized medicine, as well as enhancing human-computer interaction through more intuitive and responsive interfaces.
Papers
Respiratory Disease Classification and Biometric Analysis Using Biosignals from Digital Stethoscopes
Constantino Álvarez Casado, Manuel Lage Cañellas, Matteo Pedone, Xiaoting Wu, Le Nguyen, Miguel Bordallo López
Frequency-Aware Masked Autoencoders for Multimodal Pretraining on Biosignals
Ran Liu, Ellen L. Zippi, Hadi Pouransari, Chris Sandino, Jingping Nie, Hanlin Goh, Erdrin Azemi, Ali Moin