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      Improving Data Glove Accuracy and Usability Using a Neural Network When Measuring Finger Joint Range of Motion

      , , ,
      Sensors
      MDPI AG

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          Abstract

          Data gloves capable of measuring finger joint kinematics can provide objective range of motion information useful for clinical hand assessment and rehabilitation. Data glove sensors are strategically placed over specific finger joints to detect movement of the wearers’ hand. The construction of the sensors used in a data glove, the number of sensors used, and their positioning on each finger joint are influenced by the intended use case. Although most glove sensors provide reasonably stable linear output, this stability is influenced externally by the physical structure of the data glove sensors, as well as the wearer’s hand size relative to the data glove, and the elastic nature of materials used in its construction. Data gloves typically require a complex calibration method before use. Calibration may not be possible when wearers have disabled hands or limited joint flexibility, and so limits those who can use a data glove within a clinical context. This paper examines and describes a unique approach to calibration and angular calculation using a neural network that improves data glove repeatability and accuracy measurements without the requirement for data glove calibration. Results demonstrate an overall improvement in data glove measurements. This is particularly relevant when the data glove is used with those who have limited joint mobility and cannot physically complete data glove calibration.

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          Most cited references34

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          Measurement in Medicine: The Analysis of Method Comparison Studies

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            A Survey of Glove-Based Systems and Their Applications

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              Development and evaluation of a low-cost sensor glove for assessment of human finger movements in neurophysiological settings.

              Sensor gloves for measurements of finger movements are a promising tool for objective assessments of kinematic parameters and new rehabilitation strategies. Here, a novel low-cost sensor glove equipped with resistive bend sensors is described and evaluated. Resistive bend sensors were modified in order to optimize measurement accuracy (quantified as the stability of sensor signal after a fast and constant bending) and to increase sensor linearity, reducing calibration time from several minutes to only approximately 10s. Reliability analysis of the sensor glove in five subjects showed an intraclass correlation coefficient (ICC) of 0.93+/-0.05, a mean standard deviation of 1.59 degrees and an overall error of 4.96 degrees , comparable to previously evaluated sensor gloves. User acceptance and applicability, assessed by a user feedback questionnaire, was high. Thus, with minor modifications, resistive bend sensors are suitable for accurate assessments of human finger movements. The low material costs (
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                Author and article information

                Contributors
                Journal
                SENSC9
                Sensors
                Sensors
                MDPI AG
                1424-8220
                March 2022
                March 14 2022
                : 22
                : 6
                : 2228
                Article
                10.3390/s22062228
                c3b357fd-17c1-4571-9891-d35af778e28a
                © 2022

                https://creativecommons.org/licenses/by/4.0/

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