Biomedical Engineering Group, Department of Electrical Engineering, Center of Excellence on Soft Computing and Intelligent Information Processing, Ferdowsi University, Mashhad, Iran.
J Biomed Inform. 2022 Jun;130:104077. doi: 10.1016/j.jbi.2022.104077. Epub 2022 Apr 20.
An automatic assessment system for physical telerehabilitation could reduce the time and cost of treatments. But such assessment involves stochastic uncertainties, nonlinearities, and complexities of human movement. Probabilistic models and deep structures are two categories that could, respectively, address the stochastic uncertainty and complexity of motion data. In the proposed Deep Mixture Density Network (DMDN), probabilistic models were concurrently processed along with deep neural networks. More specifically, a multi-branch convolutional layer extracted the deep features of motion data, a Long Short Term Memory (LSTM) learned its temporal dependencies, and a Gaussian Mixture Model (GMM) handled the stochastic interaction of its preceding layers in reaching a more valid assessment and improved generalization to new movements. Finally, the weighted mean of the GMM components was used as the performance score for exercises. Input data were the time series related to the joints' position and orientation extracted from the Kinect v2 sensor video. A clinical reference score for each movement was also included for training the DMDN. In addition to comparisons with the state-of-the-art algorithms, an ablation study of the various elements comprising the DMDN was performed. Three configurations of convolutional filter window transitions across input data were also investigated. Results indicate that the proposed DMDN with one-dimensional parallel window transitions outperforms the other competing strategies in the ablation study. It also achieves higher reliability in terms of a lower RMSE standard deviation against a DMDN without GMM strategy while ranking competitively according to the Spearman correlation coefficient and Root Mean Square Error.
自动评估物理远程康复治疗系统可以减少治疗时间和成本。但是,这种评估涉及到随机不确定性、非线性和人体运动的复杂性。概率模型和深度结构是两种可以分别解决运动数据随机不确定性和复杂性的方法。在提出的深度混合密度网络 (DMDN) 中,概率模型与深度神经网络同时处理。具体来说,多分支卷积层提取运动数据的深度特征,长短期记忆 (LSTM) 学习其时间依赖性,高斯混合模型 (GMM) 处理其前一层的随机交互,以实现更有效的评估和对新运动的改进推广。最后,GMM 分量的加权平均值用作运动的性能得分。输入数据是从 Kinect v2 传感器视频中提取的与关节位置和方向相关的时间序列。每个运动的临床参考评分也用于训练 DMDN。除了与最先进算法的比较外,还对构成 DMDN 的各个元素进行了消融研究。还研究了输入数据中卷积滤波器窗口转换的三种配置。结果表明,具有一维并行窗口转换的所提出的 DMDN 在消融研究中的表现优于其他竞争策略。它还通过降低 RMSE 标准差在与不使用 GMM 策略的 DMDN 相比时具有更高的可靠性,同时根据斯皮尔曼相关系数和均方根误差排名具有竞争力。