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Quality of the wrist range of motion curve approximation by the polynomial function

Authors: Scherbak O.Yu., Maslennikov A.L.
Published in issue: #1(18)/2018
DOI: 10.18698/2541-8009-2018-1-239


Category: Medical sciences | Chapter: Medical equipment and devices

Keywords: biomechanics, approximation, 3L algorithm, approximation quality, approximation accuracy, wrist joint, range of motion
Published: 09.01.2018

Wrist joint range of motion as an implicit curve could be approximated by the polynomial function using 3L algorithm. In this paper we discuss how different factors, such as inclination and width of the ribbon surface (distinguishing feature of the 3L algorithm) and addition of positional control points, affect the quality of such approximation. We also address the question of optimal amount of those points. Results shown that that the right choice of those factors increases the quality of the approximation.


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