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Hand Gesture Classification Using Inertial Based Sensors via a Neural Network

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Date

2017

Authors

Akan, Erhan
Tora, Hakan
Uslu, Baran

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IEEE

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Abstract

In this study, a mobile phone equipped with four types of sensors namely, accelerometer, gyroscope, magnetometer and orientation, is used for gesture classification. Without feature selection, the raw data from the sensor outputs are processed and fed into a Multi-Layer Perceptron classifier for recognition. The user independent, single user dependent and multiple user dependent cases are all examined. Accuracy values of 91.66% for single user dependent case, 87.48% for multiple user dependent case and 60% for the user independent case are obtained. In addition, performance of each sensor is assessed separately and the highest performance is achieved with the orientation sensor.

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Keywords

Gesture Recognition, Neural Network, Accelerometer, Magnetometer, Gyroscope, Orientation Sensor

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Citation

Akan, Erhan; Tora, Hakan; Uslu, Baran. "Hand Gesture Classification Using Inertial Based Sensors via a Neural Network", Electronics, Circuits and Systems (ICECS), pp. 1-4, 2017.

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Electronics, Circuits and Systems (ICECS)

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1

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4