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A Novel HMM Distributed Classifier for the Detection of Gait Phases by Means of a Wearable Inertial Sensor Network

机译:一种新型的可穿戴式惯性传感器网络用于步态检测的HMM分布式分类器

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In this work, we decided to apply a hierarchical weighted decision, proposed and used in other research fields, for the recognition of gait phases. The developed and validated novel distributed classifier is based on hierarchical weighted decision from outputs of scalar Hidden Markov Models (HMM) applied to angular velocities of foot, shank, and thigh. The angular velocities of ten healthy subjects were acquired via three uni-axial gyroscopes embedded in inertial measurement units (IMUs) during one walking task, repeated three times, on a treadmill. After validating the novel distributed classifier and scalar and vectorial classifiers-already proposed in the literature, with a cross-validation, classifiers were compared for sensitivity, specificity, and computational load for all combinations of the three targeted anatomical segments. Moreover, the performance of the novel distributed classifier in the estimation of gait variability in terms of mean time and coefficient of variation was evaluated. The highest values of specificity and sensitivity (>0.98) for the three classifiers examined here were obtained when the angular velocity of the foot was processed. Distributed and vectorial classifiers reached acceptable values (>0.95) when the angular velocity of shank and thigh were analyzed. Distributed and scalar classifiers showed values of computational load about 100 times lower than the one obtained with the vectorial classifier. In addition, distributed classifiers showed an excellent reliability for the evaluation of mean time and a good/excellent reliability for the coefficient of variation. In conclusion, due to the better performance and the small value of computational load, the here proposed novel distributed classifier can be implemented in the real-time application of gait phases recognition, such as to evaluate gait variability in patients or to control active orthoses for the recovery of mobility of lower limb joints.
机译:在这项工作中,我们决定应用在其他研究领域中提出和使用的分层加权决策,以识别步态阶段。经过开发和验证的新型分布式分类器是基于标量隐马尔可夫模型(HMM)输出的分层加权决策,该标量应用于脚,小腿和大腿的角速度。通过在跑步机上执行一次步行任务期间,通过嵌入惯性测量单元(IMU)的三个单轴陀螺仪获取十名健康受试者的角速度。在验证了文献中已经提出的新颖的分布式分类器以及标量和矢量分类器之后,通过交叉验证,比较了三个目标解剖段所有组合的分类器的敏感性,特异性和计算量。此外,评估了新型分布式分类器在估计步态变异性方面的平均时间和变异系数的性能。当对脚的角速度进行处理时,此处检查的三个分类器的特异性和敏感性最高(> 0.98)。当分析小腿和大腿的角速度时,分布式分类器和矢量分类器达到可接受的值(> 0.95)。分布式分类器和标量分类器显示的计算负荷值比矢量分类器低约100倍。此外,分布式分类器在评估平均时间方面显示出极好的可靠性,而在变异系数方面则表现出良好/出色的可靠性。总之,由于具有更好的性能和较小的计算负荷,因此本文提出的新型分布式分类器可在步态阶段识别的实时应用中实现,例如评估患者的步态变异性或控制主动矫形器。下肢关节活动度的恢复。

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