Hassan Rafiul, Begg Rezaul, Taylor Simon, Kumar Dinesh K
Department of Computer Science and Software Engineering, University of Melbourne, Carlton, Victoria 3010, Australia.
Conf Proc IEEE Eng Med Biol Soc. 2006;2006:1216-9. doi: 10.1109/IEMBS.2006.259804.
This paper reports the use of HMM-based fuzzy rules generation for identifying the differences in gait between people with tendencies to fall and healthy people. This work is built on the work reported earlier by the authors where fuzzy rules were successfully applied in gait pattern recognition. This paper reports the hybridization of HMM with fuzzy logic for improving the recognition accuracy. Gait features were extracted from minimum foot clearance (MFC) data that was collected during continuous walking on a treadmill from 20 elderly subjects, 10 healthy and 10 with reported balance problem and history of falls. The input feature space was divided into a number of groups based on HMM generated log-likelihood values, and consequently each group was applied to construct a new fuzzy rule. Gradient descent method was used to optimize the parameters of the generated rules. These were then applied to recognize differences in the gait in subjects with trip-related falls history. The model's performance was evaluated using a cross-validation protocol applied on the training and testing data. The HMM-Fuzzy model outperformed the Fuzzy-based gait recognition as reflected both in the receiver operating characteristics (ROC) results as well as absolute percentage accuracy.
本文报道了基于隐马尔可夫模型(HMM)生成模糊规则以识别有跌倒倾向的人与健康人之间步态差异的方法。这项工作建立在作者之前报道的工作基础上,在之前的工作中模糊规则成功应用于步态模式识别。本文报道了HMM与模糊逻辑的结合,以提高识别准确率。步态特征从最小足间隙(MFC)数据中提取,这些数据是在20名老年受试者在跑步机上持续行走时收集的,其中10名健康,10名有平衡问题和跌倒史。基于HMM生成的对数似然值,将输入特征空间划分为若干组,然后每组用于构建一条新的模糊规则。采用梯度下降法优化生成规则的参数。然后将这些参数应用于识别有绊倒相关跌倒史的受试者的步态差异。使用应用于训练和测试数据的交叉验证协议评估模型的性能。HMM-模糊模型在接收器操作特性(ROC)结果以及绝对百分比准确率方面均优于基于模糊的步态识别。