Verlagslink DOI: 10.48550/arXiv.2510.18668
Titel: Prototyping an end-to-end multi-modal tiny-CNN for cardiovascular sensor patches
Sprache: Englisch
Autorenschaft: Ibrahim, Mustafa Fuat Rifet 
Alkanat, Tunc 
Meijer, Maurice 
Manthey, Felix 
Schlaefer, Alexander 
Stelldinger, Peer  
Schlagwörter: Machine Learning; Computer Vision and Pattern Recognition
Erscheinungsdatum: 21-Okt-2025
Verlag: Cornell University
Zeitschrift oder Schriftenreihe: Arxiv 
Zusammenfassung: 
The vast majority of cardiovascular diseases may be preventable if early signs and risk factors are detected. Cardiovascular monitoring with body-worn sensor devices like sensor patches allows for the detection of such signs while preserving the freedom and comfort of patients. However, the analysis of the sensor data must be robust, reliable, efficient, and highly accurate. Deep learning methods can automate data interpretation, reducing the workload of clinicians. In this work, we analyze the feasibility of applying deep learning models to the classification of synchronized electrocardiogram (ECG) and phonocardiogram (PCG) recordings on resource-constrained medical edge devices. We propose a convolutional neural network with early fusion of data to solve a binary classification problem. We train and validate our model on the synchronized ECG and PCG recordings from the Physionet Challenge 2016 dataset. Our approach reduces memory footprint and compute cost by three orders of magnitude compared to the state-of-the-art while maintaining competitive accuracy. We demonstrate the applicability of our proposed model on medical edge devices by analyzing energy consumption on a microcontroller and an experimental sensor device setup, confirming that on-device inference can be more energy-efficient than continuous data streaming.
URI: https://hdl.handle.net/20.500.12738/19349
Begutachtungsstatus: Nur bei Preprints: Diese Version ist noch nicht begutachtet
Einrichtung: Competence Center Smart Systems in Society 
Fakultät Informatik und Digitale Gesellschaft 
Dokumenttyp: Vorabdruck (Preprint)
Hinweise zur Quelle: Submitted to the IEEE Journal of Biomedical And Health Informatics
Enthalten in den Sammlungen:Publications without full text

Zur Langanzeige

Google ScholarTM

Prüfe

HAW Katalog

Prüfe

Volltext ergänzen

Feedback zu diesem Datensatz


Alle Ressourcen in diesem Repository sind urheberrechtlich geschützt.