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A new inertial sensor-based gait recognition method via deterministic learning

机译:一种新的基于确定性学习的基于惯性传感器的步态识别方法

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This paper presents a new gait recognition method based on acceleration and angular velocity data captured by inertial sensors via deterministic learning. These gait features describe the motion trajectories of human gait and contain rich information for persons identification. The gait recognition approach consists of two phases: a training phase and a recognition phase. In the training phase, the gait dynamics underlying different individuals' gaits are represented by the acceleration and angular velocity features, and are locally accurately approximated by radial basis function (RBF) neural networks. The obtained knowledge of approximated gait dynamics is stored in constant RBF networks. In the recognition phase, a bank of dynamical estimators is constructed for all the training gait patterns. Prior knowledge of human gait dynamics represented by the constant RBF networks are embedded in the estimators. By comparing the set of estimators with a test gait pattern, a set of recognition errors are generated. The average L norms of the errors are taken as the similarity measure between the dynamics of the training gait patterns and the dynamics of the test gait pattern. The test gait pattern similar to one of the training gait patterns can be recognized according to the smallest error principle. Finally, comprehensive experiments are carried out on the OU-ISIR biometric gait database: inertial sensor dataset, which includes at most 744 subjects (389 males and 355 females) and is now the world's largest inertial sensor-based gait database, to demonstrate the recognition performance of the proposed algorithm.
机译:本文提出了一种新的基于确定性学习的惯性传感器捕获的加速度和角速度数据的步态识别方法。这些步态特征描述了人类步态的运动轨迹,并包含丰富的信息以供人员识别。步态识别方法包括两个阶段:训练阶段和识别阶段。在训练阶段,基于不同个体步态的步态动力学由加速度和角速度特征表示,并通过径向基函数(RBF)神经网络局部精确地近似。获得的近似步态动力学知识存储在恒定RBF网络中。在识别阶段,针对所有训练步态模式构建一组动态估计器。在估计器中嵌入了由恒定RBF网络表示的人类步态动力学的先验知识。通过将一组估计量与一个测试步态模式进行比较,会生成一组识别错误。误差的平均L范数被用作训练步态图样的动态与测试步态图样的动态之间的相似性度量。可以根据最小误差原理识别类似于训练步态模式之一的测试步态模式。最后,在OU-ISIR生物特征步态数据库上进行了全面的实验:惯性传感器数据集,包括最多744名受试者(389名男性和355名女性),现已成为全球最大的基于惯性传感器的步态数据库,以证明其识别能力所提算法的性能。

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