Sensor Data
Sensor data analysis focuses on extracting meaningful information from diverse sensor modalities (e.g., accelerometers, cameras, LiDAR) to address various applications, from healthcare monitoring to autonomous driving. Current research emphasizes developing robust and efficient models, including deep learning architectures like Transformers, Graph Neural Networks, and Generative Adversarial Networks, often coupled with techniques like federated learning and self-supervised learning to handle data scarcity, privacy concerns, and heterogeneity. This field is crucial for advancing numerous scientific disciplines and practical applications, enabling improved diagnostics, personalized healthcare, enhanced automation, and safer transportation systems.
Papers
EBV: Electronic Bee-Veterinarian for Principled Mining and Forecasting of Honeybee Time Series
Mst. Shamima Hossain, Christos Faloutsos, Boris Baer, Hyoseung Kim, Vassilis J. Tsotras
HW-SW Optimization of DNNs for Privacy-preserving People Counting on Low-resolution Infrared Arrays
Matteo Risso, Chen Xie, Francesco Daghero, Alessio Burrello, Seyedmorteza Mollaei, Marco Castellano, Enrico Macii, Massimo Poncino, Daniele Jahier Pagliari