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A Deep Learning Framework for Assessing Physical Rehabilitation Exercises

机译:评估身体康复锻炼的深度学习框架

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Computer-aided assessment of physical rehabilitation entails evaluation of patient performance in completing prescribed rehabilitation exercises, based on processing movement data captured with a sensory system. Despite the essential role of rehabilitation assessment toward improved patient outcomes and reduced healthcare costs, existing approaches lack versatility, robustness, and practical relevance. In this paper, we propose a deep learning-based framework for automated assessment of the quality of physical rehabilitation exercises. The main components of the framework are metrics for quantifying movement performance, scoring functions for mapping the performance metrics into numerical scores of movement quality, and deep neural network models for generating quality scores of input movements via supervised learning. The proposed performance metric is defined based on the log-likelihood of a Gaussian mixture model, and encodes low-dimensional data representation obtained with a deep autoencoder network. The proposed deep spatio-temporal neural network arranges data into temporal pyramids, and exploits the spatial characteristics of human movements by using sub-networks to process joint displacements of individual body parts. The presented framework is validated using a dataset of ten rehabilitation exercises. The significance of this work is that it is the first that implements deep neural networks for assessment of rehabilitation performance.
机译:基于身体的康复的计算机辅助评估需要根据处理通过传感系统捕获的运动数据来评估患者完成规定的康复锻炼的表现。尽管康复评估对改善患者预后和降低医疗保健成本起着至关重要的作用,但现有方法仍缺乏通用性,稳健性和实用性。在本文中,我们提出了一个基于深度学习的框架,用于自动评估身体康复锻炼的质量。该框架的主要组件包括:量化运动表现的指标;评分函数,用于将绩效指标映射到运动质量的数字评分;以及深度神经网络模型,用于通过监督学习生成输入运动的质量评分。提出的性能指标是基于高斯混合模型的对数似然来定义的,并对通过深度自动编码器网络获得的低维数据表示进行编码。提出的深时空神经网络将数据排列到时间金字塔中,并通过使用子网处理人体各个部位的关节位移来利用人体运动的空间特征。使用十个康复锻炼的数据集验证了所提出的框架。这项工作的意义在于,它是第一个实现用于评估康复表现的深度神经网络的公司。

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