Wavelet Analysis of Humans with Osteoarthritis

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In this research proposal we want to develop from kinematic data, measures using thewavelets theory to characterize normal and osteoarthritis knee locomotion. The kinematic data of theradio-carpal flexion-extension angles were analyzed using the wavelet transform. The experimentaldata was acquired with a complex goniometer system. The detail energy for the level 5 is an importantfactor to characterize the osteoarthritis patients and normal subjects.

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155-160

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January 2016

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© 2016 Trans Tech Publications Ltd. All Rights Reserved

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