DocumentCode :
169012
Title :
Classification of Stair Ascent and Descent in Stroke Patients
Author :
Leuenberger, Kaspar ; Gonzenbach, Roman ; Wiedmer, Eva ; Luft, Andreas ; Gassert, Roger
Author_Institution :
Rehabilitation Eng. Lab., ETH Zurich, Zurich, Switzerland
fYear :
2014
fDate :
16-19 June 2014
Firstpage :
11
Lastpage :
16
Abstract :
Wearable sensor units are a promising technology to assess ambulatory activities such as level walking, stair ascent and descent in the home environment, shedding light into the recovery process and independence of stroke survivors. However, algorithms for the identification of ambulatory activities were optimized for healthy subjects, and show limitations when considering the reduced walking speed and altered gait patterns found in patients. We present a method to identify ambulatory phases and distinguish stair ascent and descent from level walking in daily activity recordings of stroke survivors. A realistic dataset was captured with inertial and barometric pressure sensors worn at 5 anatomical locations. Statistical and wavelet based acceleration features fed into a Support Vector Machine were used to identify walking phases, while a k-Nearest-Neighbor classifier was used to discriminate between level walking, stair ascent and descent based on barometric pressure and acceleration features. Combining data from multiple sensor modules resulted in walking classification sensitivities and specificities of up to 96%. Looking at sensor modules individually, the module placed at the nonparetic ankle showed the best performance, increasing sensitivity of walking identification by almost 10% compared to the module at the paretic ankle. Level walking was identified with 97% sensitivity and 91% specificity, stair ascent with 94% sensitivity and 99% specificity and stair descent with 87% sensitivity and 99% specificity in the multi-sensor setup. Again, sensor modules placed at the ankles displayed the best performance when looking at modules individually.
Keywords :
acceleration; atmospheric pressure; biomedical telemetry; body sensor networks; data acquisition; feature extraction; gait analysis; medical disorders; medical signal processing; neurophysiology; pressure sensors; sensor fusion; signal classification; statistical analysis; support vector machines; telemedicine; wavelet transforms; ambulatory activity assessment; ambulatory activity identification algorithm; ambulatory phase identification; barometric pressure sensor; home environment; inertial sensor; k-nearest-neighbor classifier; level walking classification; multiple sensor module data combination; multisensor setup; nonparetic ankle; optimization; sensor module placement; stair ascent classification; stair descent classification; statistical based acceleration feature; stroke patient gait pattern alteration; stroke patient recovery; stroke patient walking speed; stroke survivor daily activity recording; stroke survivor independence; support vector machine; walking classification sensitivity; walking classification specificity; walking phase identification; wavelet based acceleration feature; wearable sensor unit; Acceleration; Accelerometers; Continuous wavelet transforms; Legged locomotion; Power distribution; Sensitivity; Wrist; Accelerometer; Ambulation; Barometric Pressure Sensor; Classification; IMU; Patient; Stair ascent; Stroke; Walking; stair descent;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Wearable and Implantable Body Sensor Networks Workshops (BSN Workshops), 2014 11th International Conference on
Conference_Location :
Zurich
Print_ISBN :
978-1-4799-6135-1
Type :
conf
DOI :
10.1109/BSN.Workshops.2014.10
Filename :
6970619
Link To Document :
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