Title
Adaptive activity learning with dynamically available context.
Abstract
Numerous methods have been proposed to address different aspects of human activity recognition. However, most of the previous approaches are static in terms of the data sources used for the recognition task. As sensors can be added or can fail and be replaced by different types of sensors, creating an activity recognition model that is able to leverage dynamically available sensors becomes important. In this paper, we propose methods for activity learning and activity recognition adaptation in environments with dynamic sensor deployments. Specifically, we propose sensor and activity context models to address the problem of sensor heterogeneity, so that sensor readings can be pre-processed and populated into the recognition system properly. Based on those context models, we propose the learning-to-rank method for activity learning and its adaptation. To model the temporal characteristics of the human behaviours, we add temporal regularization into the learning and prediction phases. We use comprehensive datasets to demonstrate effectiveness of the proposed method, and show its advantage over the conventional machine learning algorithms in terms of recognition accuracy. Our method outperforms hybrid models that combine typical machine learning methods with graphical models (i.e. HMM, CRF) for temporal smoothing.
Year
DOI
Venue
2016
10.1109/PERCOM.2016.7456502
PerCom
Field
DocType
ISSN
Data mining,Data modeling,Activity recognition,Recognition system,Computer science,Context model,Smoothing,Regularization (mathematics),Artificial intelligence,Graphical model,Hidden Markov model,Machine learning
Conference
2474-2503
Citations 
PageRank 
References 
8
0.47
27
Authors
3
Name
Order
Citations
PageRank
Jiahui Wen1212.37
Jadwiga Indulska22092146.96
Mingyang Zhong3255.17