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
Continuous-Time Line-of-Sight Constrained Trajectory Planning for 6-Degree of Freedom Systems
Christopher R. Hayner, John M. Carson III, Behçet Açıkmeşe, Karen Leung
Unsupervised Multimodal Fusion of In-process Sensor Data for Advanced Manufacturing Process Monitoring
Matthew McKinney, Anthony Garland, Dale Cillessen, Jesse Adamczyk, Dan Bolintineanu, Michael Heiden, Elliott Fowler, Brad L. Boyce
SensorBench: Benchmarking LLMs in Coding-Based Sensor Processing
Pengrui Quan, Xiaomin Ouyang, Jeya Vikranth Jeyakumar, Ziqi Wang, Yang Xing, Mani Srivastava
SensorLLM: Aligning Large Language Models with Motion Sensors for Human Activity Recognition
Zechen Li, Shohreh Deldari, Linyao Chen, Hao Xue, Flora D. Salim
Protecting Activity Sensing Data Privacy Using Hierarchical Information Dissociation
Guangjing Wang, Hanqing Guo, Yuanda Wang, Bocheng Chen, Ce Zhou, Qiben Yan
Meal-taking activity monitoring in the elderly based on sensor data: Comparison of unsupervised classification methods
Abderrahim Derouiche (LAAS-S4M, UT3), Damien Brulin (LAAS-S4M, UT2J), Eric Campo (LAAS-S4M, UT2J), Antoine Piau