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Human posture tracking with flexible sensors for motion recognition

机译:用柔性传感器进行人力姿势跟踪运动识别

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The integration of conventional clothes with flexible electronics is a promising solution as a future-generation computing platform. However, the problem of user authentication on this novel platform is still underexplored. This work uses flexible sensors to track human posture and achieves the goal of user authentication. We capture human movement pattern by four stretch sensors around the shoulder and one on the elbow. We introduce the long short-term memory fully convolutional network (LSTM-FCN), which directly takes noisy and sparse sensor data as input and verifies its consistency with the user's predefined movement patterns. The method can identify a user by matching movement patterns even if there are large intrapersonal variations. The authentication accuracy of LSTM-FCN reaches 98.0%, which is 10.7% and 6.5% higher than that of dynamic time warping and dynamic time warping dependent.
机译:具有柔性电子产品的传统衣服的整合是作为未来一代计算平台的有希望的解决方案。 但是,在这个新颖平台上的用户身份验证问题仍未实现了曝光率。 这项工作使用灵活的传感器跟踪人类姿势并实现用户身份验证的目标。 我们在肩部和一个在肘部上捕捉人体运动模式。 我们介绍了长期内存完全卷积的网络(LSTM-FCN),它直接将噪声和稀疏的传感器数据作为输入,并验证其与用户预定义的移动模式的一致性。 即使存在大的内侧变化,该方法也可以通过匹配移动模式来识别用户。 LSTM-FCN的认证精度达到98.0%,比动态时间翘曲和动态时间翘曲更高的10.7%和6.5%。

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