混合密度神经网络在物理治疗中人体运动的数学建模和评价。

Aleksandar Vakanski, J. Ferguson, S. Lee
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引用次数: 24

摘要

拟建研究的目的是开发一种人体运动建模和评估的方法,这将潜在地有益于接受物理康复治疗的患者(例如,中风后或由于其他医疗条件)。最终目标是让患者使用捕捉动作的感觉系统进行家庭康复练习,其中算法将检索患者的运动轨迹,通过将所执行的动作与规定动作的参考模型进行数据分析,并将分析结果发送给患者的医生,并提供改进建议。方法建模方法采用人工神经网络,由多层循环神经元单元和多层神经元单元组成,用于估计人体运动序列中时空依赖关系的混合密度函数。输入数据是物理治疗师对患者规定的运动相关的动作序列,并通过动作捕捉系统记录下来。自动编码器子网用于降低捕获的人体运动序列的维数,并辅以混合密度子网,用于使用混合高斯分布对运动数据进行概率建模。结果提出的神经网络架构产生了一个由混合高斯密度函数表示的人体运动集的模型。观察序列的平均对数似然被用作评估受试者相对于参考运动数据集的表现一致性的性能指标。使用微软Kinect捕获的公开可用的人体动作数据集来验证所提出的方法。结论本文提出了一种新的人体运动建模和评估方法,在家庭物理治疗和康复中具有潜在的应用前景。所描述的方法采用了机器学习和神经网络领域的最新进展,通过利用这些算法的表征能力来编码长时间范围内的非线性输入-输出依赖关系,从而开发了人类运动的参数化模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling and Evaluation of Human Motions in Physical Therapy Using Mixture Density Neural Networks.
OBJECTIVE The objective of the proposed research is to develop a methodology for modeling and evaluation of human motions, which will potentially benefit patients undertaking a physical rehabilitation therapy (e.g., following a stroke or due to other medical conditions). The ultimate aim is to allow patients to perform home-based rehabilitation exercises using a sensory system for capturing the motions, where an algorithm will retrieve the trajectories of a patient's exercises, will perform data analysis by comparing the performed motions to a reference model of prescribed motions, and will send the analysis results to the patient's physician with recommendations for improvement. METHODS The modeling approach employs an artificial neural network, consisting of layers of recurrent neuron units and layers of neuron units for estimating a mixture density function over the spatio-temporal dependencies within the human motion sequences. Input data are sequences of motions related to a prescribed exercise by a physiotherapist to a patient, and recorded with a motion capture system. An autoencoder subnet is employed for reducing the dimensionality of captured sequences of human motions, complemented with a mixture density subnet for probabilistic modeling of the motion data using a mixture of Gaussian distributions. RESULTS The proposed neural network architecture produced a model for sets of human motions represented with a mixture of Gaussian density functions. The mean log-likelihood of observed sequences was employed as a performance metric in evaluating the consistency of a subject's performance relative to the reference dataset of motions. A publically available dataset of human motions captured with Microsoft Kinect was used for validation of the proposed method. CONCLUSION The article presents a novel approach for modeling and evaluation of human motions with a potential application in home-based physical therapy and rehabilitation. The described approach employs the recent progress in the field of machine learning and neural networks in developing a parametric model of human motions, by exploiting the representational power of these algorithms to encode nonlinear input-output dependencies over long temporal horizons.
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