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  4. Robust Activity Recognition Combining Anomaly Detection and Classifier Retraining
 
conference paper not in proceedings

Robust Activity Recognition Combining Anomaly Detection and Classifier Retraining

Sagha, Hesam  
•
Calatroni, Alberto
•
Millán, José del R.  
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2013
10th Annual Body Sensor Networks

Activity recognition systems based on body-worn motion sensors suffer from a decrease in performance during the deployment and run-time phases, because of probable changes in the sensors (e.g. displacement or rotation), which is the case in many real-life scenarios (e.g. mobile phone in a pocket). Existing approaches to achieve robustness tend to sacrifice information (e.g. by rotation-invariant features) or reduce the weight of the anomalous sensors at the classifier fusion stage (adaptive fusion), ignoring data which might still be perfectly meaningful, although different from the training data. We propose to use adaptation to rebuild the classifier models of the sensors which have changed position by a two-step approach: in the first step, we run an anomaly detection algorithm to automatically detect which sensors are delivering unexpected data; subsequently, we trigger a system self-training process, so that the remaining classifiers retrain the “anomalous” sensors. We show the benefit of this approach in a real activity recognition dataset comprising data from 8 sensors to recognize locomotion. The approach achieves similar accuracy compared to the upper baseline, obtained by retraining the anomalous classifiers on the new data.

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Type
conference paper not in proceedings
Author(s)
Sagha, Hesam  
Calatroni, Alberto
Millán, José del R.  
Roggen, Daniel
Tröster, Gerhard
Chavarriaga, Ricardo
Date Issued

2013

Subjects

Anomaly detection

•

Classifier adaptation

•

Activity recognition

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CNBI  
CNP  
Event nameEvent placeEvent date
10th Annual Body Sensor Networks

MIT, Cambridge

May 6-9, 2013

Available on Infoscience
April 1, 2013
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/91257
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