Gait event detection for FES using accelerometers and supervised machine learning.

R Williamson, B J Andrews
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引用次数: 184

Abstract

Rule based detectors were used with a single cluster of accelerometers attached to the shank for the real time detection of the main phases of normal gait during walking. The gait phase detectors were synthesized from two rule induction algorithms, Rough Sets (RS) and Adaptive Logic Networks (ALNs), and compared with to a previously reported stance/swing detector based on a hand crafted, rule based algorithm. Data was sampled at 100 Hz and the detection errors determined at each sample for 50 steps. For three able bodied subjects, the sample by sample accuracy of stance/swing detection ranged within 94-97%, 87-94%, and 87-95% for the RS, ALN, and the handcrafted methods, respectively. A heuristically formulated postdetector filter improved the RS and ALN detectors' accuracy to 98%. RS and ALN also detected five gait phases to an overall accuracy of 82-89% and 86-91%, respectively. The postdetector filter localized the errors to the phase transitions, but did not change the detection accuracy. The average duration of the error at each transition was 40 ms and 23 ms for RS and ALN, respectively. When implemented on a microcontroller, the RS-based detector executed ten times faster and required one tenth of the memory than the ALN-based detector.

使用加速度计和监督机器学习的FES步态事件检测。
基于规则的检测器与附着在腿上的单簇加速度计一起用于实时检测行走过程中正常步态的主要阶段。步态相位检测器由粗糙集(RS)和自适应逻辑网络(aln)两种规则归纳算法合成,并与先前报道的基于手工制作的基于规则的算法的姿态/摆动检测器进行比较。以100 Hz的频率对数据进行采样,并在50步内确定每个样本的检测误差。对于3名身体健全的被试,RS法、ALN法和手工法的姿态/摆动检测准确率分别在94-97%、87-94%和87-95%之间。启发式的检测器后置滤波器将RS和ALN检测器的准确率提高到98%。RS和ALN也检测到5个步态阶段,总体准确率分别为82-89%和86-91%。后检滤波器将误差定位到相变,但不改变检测精度。RS和ALN在每次转换时的平均误差持续时间分别为40 ms和23 ms。当在微控制器上实现时,基于rs的检测器执行速度比基于aln的检测器快十倍,并且需要十分之一的内存。
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