Title
Towards scalable activity recognition: adapting zero-effort crowdsourced acoustic models
Abstract
Human activity recognition systems traditionally require a manual annotation of massive training data, which is laborious and non-scalable. An alternative approach is mining existing online crowd-sourced repositories for open-ended, free annotated training data. However, differences across data sources or in observed contexts prevent a crowd-sourced based model reaching user-dependent recognition rates. To enhance the use of crowd-sourced data in activity recognition, we take an essential step forward by adapting a generic model based on crowd-sourced data to a personalized model. In this work, we investigate two adapting approaches: 1) a semi-supervised learning to combine crowd-sourced data and unlabeled user data, and 2) an active-learning to query the user for labeling samples where the crowd-sourced based model fails to recognize. We test our proposed approaches on 7 users using auditory modality on mobile phones with a total data of 14 days and up to 9 daily context classes. Experimental results indicate that the semi-supervised model can indeed improve the recognition accuracy up to 21% but is still significantly outperformed by a supervised model on user data. In the active learning scheme, the crowd-sourced model can reach the performance of the supervised model by requesting labels of 0.7% of user data only. Our work illustrates a promising first step towards an unobtrusive, efficient and open-ended context recognition system by adapting free online crowd-sourced data into a personalized model.
Year
DOI
Venue
2013
10.1145/2541831.2541832
MUM
Keywords
Field
DocType
zero-effort crowdsourced acoustic model,free online crowd-sourced data,unlabeled user data,crowd-sourced data,massive training data,free annotated training data,supervised model,total data,towards scalable activity recognition,user data,data source,personalized model,activity recognition,adaptation,personalization,active learning,crowdsourcing,ambient sound,semi supervised learning
Active learning,Semi-supervised learning,Activity recognition,Recognition system,Computer science,Crowdsourcing,Artificial intelligence,Mobile phone,Machine learning,Scalability,Personalization
Conference
Citations 
PageRank 
References 
6
0.43
14
Authors
3
Name
Order
Citations
PageRank
Long-Van Nguyen-Dinh1955.78
Ulf Blanke269936.03
Gerhard Tröster32493250.70