Abstract
This paper investigates an ear worn sensor for the development of a gait analysis framework. Instead of explicitly defining gait features that indicate injury or impairment, an automatic method of feature extraction and selection is proposed. The proposed framework uses multi-resolution wavelet analysis and margin based feature selection. It was validated on three datasets; the first simulating a leg injury, the second simulating abdominal impairment that could result from surgery or injury and the third is a dataset collected from a patient during recovery from leg injury. The method shows a clear distinction of gait between injured and normal walking. It also illustrates the fact that using source separation before pattern classification can significantly improve the proposed gait analysis framework. © 2009 IEEE.
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CITATION STYLE
Atallah, L., Lo, B., Yang, G. Z., & Aziz, O. (2009). Detecting walking gait impairment with an ear-worn sensor. In Proceedings - 2009 6th International Workshop on Wearable and Implantable Body Sensor Networks, BSN 2009 (pp. 175–180). https://doi.org/10.1109/BSN.2009.41
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