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arxiv 1703.03921 v1 pith:NEFESDWW submitted 2017-03-11 cs.CV cs.AI

Gait Pattern Recognition Using Accelerometers

classification cs.CV cs.AI
keywords gaitfeatureshumanclassifierssomeabilityaccelerometersankle
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Motion ability is one of the most important human properties, including gait as a basis of human transitional movement. Gait, as a biometric for recognizing human identities, can be non-intrusively captured signals using wearable or portable smart devices. In this study gait patterns is collected using a wireless platform of two sensors located at chest and right ankle of the subjects. Then the raw data has undergone some preprocessing methods and segmented into 5 seconds windows. Some time and frequency domain features is extracted and the performance evaluated by 5 different classifiers. Decision Tree (with all features) and K-Nearest Neighbors (with 10 selected features) classifiers reached 99.4% and 100% respectively.

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