Umberto Pirovano
Time-Aware Graph Neural Networks for Human Activity Recognition from mmWave Radar Point Clouds.
Rel. Diego Valsesia, Manon Dampfhoffer, Régis Chanal. Politecnico di Torino, Corso di laurea magistrale in Communications Engineering, 2025
|
|
PDF (Tesi_di_laurea)
- Tesi
Accesso limitato a: Solo utenti staff fino al 24 Ottobre 2026 (data di embargo). Licenza: Creative Commons Attribution Non-commercial No Derivatives. Download (13MB) |
Abstract
The rapid advancements in machine learning and computer vision have transformed the way signals and images are processed, opening new opportunities in areas such as autonomous driving, human–machine interaction, healthcare, and surveillance. Among the sensing technologies enabling these applications, millimeter-wave radar has recently gained increasing attention. Compared to cameras and LiDARs, radar sensors are low-cost, robust to adverse weather conditions, and inherently privacy-preserving. Their relevance is further amplified by the forthcoming 6G integrated sensing and communications (ISAC) paradigm, where sensing and wireless connectivity will converge into a unified infrastructure. Despite these advantages, radar data remain challenging to process: they are low-resolution, sparse, and noisy.
Traditional approaches often project the raw data into two-dimensional grids (e.g., range–Doppler maps) in order to leverage convolutional neural networks, but this inevitably discards structural information
Tipo di pubblicazione
URI
![]() |
Modifica (riservato agli operatori) |
