Activity Recognition
Activity recognition (AR) aims to automatically identify and classify human actions from various data sources, such as wearable sensors, cameras, and microphones. Current research heavily utilizes deep learning, focusing on architectures like convolutional neural networks (CNNs), recurrent neural networks (RNNs), transformers, and graph convolutional networks (GCNs), often incorporating multimodal data fusion and techniques like contrastive learning and domain adaptation to improve robustness and accuracy. The field is significant for its potential applications in healthcare monitoring, human-computer interaction, and smart environments, driving advancements in both model explainability and efficient on-device processing.
Papers
Beyond Isolated Frames: Enhancing Sensor-Based Human Activity Recognition through Intra- and Inter-Frame Attention
Shuai Shao, Yu Guan, Victor Sanchez
A Masked Semi-Supervised Learning Approach for Otago Micro Labels Recognition
Meng Shang, Lenore Dedeyne, Jolan Dupont, Laura Vercauteren, Nadjia Amini, Laurence Lapauw, Evelien Gielen, Sabine Verschueren, Carolina Varon, Walter De Raedt, Bart Vanrumste
MESEN: Exploit Multimodal Data to Design Unimodal Human Activity Recognition with Few Labels
Lilin Xu, Chaojie Gu, Rui Tan, Shibo He, Jiming Chen
EventSleep: Sleep Activity Recognition with Event Cameras
Carlos Plou, Nerea Gallego, Alberto Sabater, Eduardo Montijano, Pablo Urcola, Luis Montesano, Ruben Martinez-Cantin, Ana C. Murillo
Deep Generative Domain Adaptation with Temporal Relation Knowledge for Cross-User Activity Recognition
Xiaozhou Ye, Kevin I-Kai Wang
Deep Generative Domain Adaptation with Temporal Attention for Cross-User Activity Recognition
Xiaozhou Ye, Kevin I-Kai Wang
Cross-user activity recognition using deep domain adaptation with temporal relation information
Xiaozhou Ye, Waleed H. Abdulla, Nirmal Nair, Kevin I-Kai Wang