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
Large Language Models are Zero-Shot Recognizers for Activities of Daily Living
Gabriele Civitarese, Michele Fiori, Priyankar Choudhary, Claudio Bettini
Neuro-Symbolic Fusion of Wi-Fi Sensing Data for Passive Radar with Inter-Modal Knowledge Transfer
Marco Cominelli, Francesco Gringoli, Lance M. Kaplan, Mani B. Srivastava, Trevor Bihl, Erik P. Blasch, Nandini Iyer, Federico Cerutti
Accurate Passive Radar via an Uncertainty-Aware Fusion of Wi-Fi Sensing Data
Marco Cominelli, Francesco Gringoli, Lance M. Kaplan, Mani B. Srivastava, Federico Cerutti
Unsupervised explainable activity prediction in competitive Nordic Walking from experimental data
Silvia García-Méndez, Francisco de Arriba-Pérez, Francisco J. González-Castaño, Javier Vales-Alonso
EarDA: Towards Accurate and Data-Efficient Earable Activity Sensing
Shengzhe Lyu, Yongliang Chen, Di Duan, Renqi Jia, Weitao Xu
iKAN: Global Incremental Learning with KAN for Human Activity Recognition Across Heterogeneous Datasets
Mengxi Liu, Sizhen Bian, Bo Zhou, Paul Lukowicz
FLOW: Fusing and Shuffling Global and Local Views for Cross-User Human Activity Recognition with IMUs
Qi Qiu, Tao Zhu, Furong Duan, Kevin I-Kai Wang, Liming Chen, Mingxing Nie, Mingxing Nie