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A HMM distributed classifier to control robotic knee module of an active orthosis

机译:HMM分布式分类器,用于控制主动矫形器的机器人膝关节模块

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The aim of this work is the evaluation of Distributed Classifier for the detection of gait phases that can be implemented in an active knee orthosis for the recovery of locomotion of pediatric subjects with neurological diseases, such as Cerebral Palsy (CP). The classifier is based on a Hierarchical Weighted Decision applied to the outputs of two or more scalar Hidden Markov Models (HMMs) trained by linear accelerations and angular velocities measured at shank and thigh. The kinematics of the dominant lower limb of ten healthy subjects were acquired by means of linear accelerometers and gyroscopes embedded in two inertial sensors. The actual sequence of gait phases was captured by means of foot switches. The experimental procedure consisted in one walking task, repeated for three times, on a treadmill at the preferred velocity of each subject. We compared the performance, in terms of sensitivity and specificity, of both Scalar Classifiers (SCs) and Distributed Classifiers (DCs) based on all the combinations of sagittal acceleration and sagittal angular velocity of the two body segments. The DC based on the angular velocities showed the highest values of sensitivity and specificity. The SC based on the angular velocity of shank was the better among others SCs, but the values of sensitivity and specificity are lower than 0.95. When we use only one sensor, placed on shank or thigh, the DC based on kinematic variables of shank showed better results, but not higher than 0.95. Consequently, the additional information provided by linear acceleration did not improve the performance and then, the gait-phase detection algorithm, which can be implemented in an active knee orthosis, has to be based on the output of two gyroscopes placed on shank and thigh.
机译:这项工作的目的是评估分布式分类器,以检测步态阶段,该步态阶段可以在活动性膝关节矫形器中实施,以恢复患有神经性疾病(如脑瘫)的小儿的运动。分类器基于应用于两个或多个标量隐马尔可夫模型(HMM)的输出的分层加权决策,该标量通过在小腿和大腿处测量的线性加速度和角速度进行训练。通过线性加速度计和嵌入两个惯性传感器的陀螺仪,获取了十名健康受试者的优势下肢运动学。步态阶段的实际顺序是通过脚踏开关捕获的。实验过程包括在跑步机上以每个对象的首选速度重复一次重复三次的步行任务。我们根据两个人体节段的矢状加速度和矢状角速度的所有组合,比较了标量分类器(SC)和分布式分类器(DC)的性能(在敏感性和特异性方面)。基于角速度的DC显示出最高的灵敏度和特异性值。基于柄的角速度的SC较其他SC更好,但敏感性和特异性值均低于0.95。当我们仅使用一个放在小腿或大腿上的传感器时,基于小腿运动学变量的DC会显示更好的结果,但不会高于0.95。因此,由线性加速度提供的附加信息并不能改善性能,然后,可以在主动膝关节矫形器中实施的步态相位检测算法必须基于放置在小腿和大腿上的两个陀螺仪的输出。

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