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Thigh Motion-Based Gait Analysis for Human Identification using Inertial Measurement Units (IMUs)

机译:基于大腿运动的步态分析,用于使用惯性测量单元(IMU)进行人体识别

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摘要

Data security is an increasing concern due to the rapid pace of technological development and Internet of Things (IoT) implementation today. Mobile smartphones in particular is becoming a common place in the handling of sensitive information, leaving these devices vulnerable to data breaches. Biometric authentication is a viable alternative to current mobile phone security methods due to it being inherent to an individual. One biometric authentication parameter of active interest is the human gait. Sensor-based gait identification, in particular, is widely being researched due to the advantages of motion sensors being portable, wearable, and able to capture 3D motion. In this study, the researchers emulate a smartphone`s IMU using two sensors that are simultaneously placed on the right and left thigh of 10 volunteers, of ages 2026, emulating the two most common placements of a smartphone. The acquired gait data from the IMUs, pitch, roll, and yaw angles, of the volunteers are the variables of this study. This study demonstrates the potential of human gait in biometric authentication with a Convolutional Neural Network gait identification algorithm. The algorithm is applied on 4 datasets, 3 of which are single-parameter datasets and 1 comprising of all the three parameters, roll, pitch, and yaw. For both left and right thigh data, the highest classification accuracy (98.34%) and precision (98.42%) were yielded by the three-parameter dataset, followed by the dataset comprising only of yaw parameter with a highest yielded average accuracy of 93.02% and an average yielded precision of 93.82%. The elapsed time during the training of each dataset is also recorded. The CNN training duration of the three-parameter dataset took almost 3.6 times longer than that of a single-parameter dataset.
机译:由于当今技术发展和物联网(IoT)的快速发展,数据安全性日益受到关注。特别是移动智能手机正在成为处理敏感信息的常见场所,使这些设备容易受到数据泄露的影响。由于生物识别身份验证是个人固有的,因此它可以替代当前的移动电话安全方法。积极关注的生物特征认证参数之一是人的步态。由于运动传感器具有便携式,可穿戴并能够捕获3D运动的优势,因此,尤其是基于传感器的步态识别正在得到广泛研究。在这项研究中,研究人员使用两个传感器模拟了智能手机的IMU,该传感器同时放置在1026名年龄在2026年的志愿者的左右大腿上,模拟了智能手机的两种最常见的放置方式。志愿者从IMU,俯仰,侧倾和偏航角获取的步态数据是本研究的变量。这项研究证明了使用卷积神经网络步态识别算法进行生物识别时的步态潜力。该算法适用于4个数据集,其中3个是单参数数据集,而1个则包括所有三个参数(侧倾,俯仰和偏航)。对于左大腿和右大腿数据,三参数数据集的分类准确度最高(98.34 \%),精度最高(98.42 \\%),其后是仅包含偏航参数的数据集,平均准确度最高93.02 \%,平均屈服精度为93.82%。还记录了每个数据集训练期间的经过时间。三参数数据集的CNN训练持续时间比单参数数据集的花费了近3.6倍。

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