Sofia Belloni
Enhancing PPG-Based Heart Rate Estimation combining Data Augmentation and Model Pre-training.
Rel. Daniele Jahier Pagliari, Alessio Burello, Luca Benfenati. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Informatica (Computer Engineering), 2024
|
Preview |
PDF (Tesi_di_laurea)
- Tesi
Licenza: Creative Commons Attribution Non-commercial No Derivatives. Download (2MB) | Preview |
Abstract
Accurate heart rate (HR) estimation from photoplethysmographic (PPG) signals is critical for health monitoring applications, such as cardiovascular disease management, fitness and activity tracking, and detecting arrhythmia or other heart-related abnormalities. Without subjects’ movements and with personalized subject data, nowadays HR- estimation can be considered a “solved problem”, even with low-cost commercial smartwatches. However, in a more general and realistic scenario of daily life, this task remains challenging due to motion artefacts (MA) and inter-subject variability. This thesis addresses these challenges by proposing a series of improvements to existing neural network architectures for more robust and accurate HR estimation. We first explored different Deep Learning approaches, starting with a Masked Autoencoder for unsupervised feature learning.
While this model provided an initial reference, it did not meet the desired performance in HR estimation
Relatori
Anno Accademico
Tipo di pubblicazione
Numero di pagine
Corso di laurea
Classe di laurea
Aziende collaboratrici
URI
![]() |
Modifica (riservato agli operatori) |
