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Hand gesture recognition using machine learning and the Myo armband

机译:使用机器学习和Myo臂章进行手势识别

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Gesture recognition has multiple applications in medical and engineering fields. The problem of hand gesture recognition consists of identifying, at any moment, a given gesture performed by the hand. In this work, we propose a new model for hand gesture recognition in real time. The input of this model is the surface electromyography measured by the commercial sensor the Myo armband placed on the forearm. The output is the label of the gesture executed by the user at any time. The proposed model is based on the Λ-nearest neighbor and dynamic time warping algorithms. This model can learn to recognize any gesture of the hand. To evaluate the performance of our model, we measured and compared its accuracy at recognizing 5 classes of gestures to the accuracy of the proprietary system of the Myo armband. As a result of this evaluation, we determined that our model performs better (86% accurate) than the Myo system (83%).
机译:手势识别在医学和工程领域具有多种应用。手势识别的问题包括在任何时候识别由手执行的给定手势。在这项工作中,我们提出了一种实时手势识别的新模型。该模型的输入是由放置在前臂上的Myo臂带的商用传感器测量的表面肌电图。输出是用户随时执行的手势标签。所提出的模型基于Λ最近邻和动态时间规整算法。该模型可以学习识别手的任何手势。为了评估模型的性能,我们测量并比较了在识别5类手势时其准确性与Myo臂章专有系统的准确性。评估的结果是,我们确定我们的模型比Myo系统(83%)的性能更好(准确度86%)。

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