论文标题
用深度学习体系结构自动评估功能运动筛查练习
Automatic Assessment of Functional Movement Screening Exercises with Deep Learning Architectures
论文作者
论文摘要
(1)背景:物理疗法的成功取决于运动练习的常规和正确表现。自动评估这些的系统可以支持该治疗。该领域的先前方法很少依赖深度学习方法,并且还没有充分利用其潜力。 (2)方法:使用由17个IMU组成的测量系统,记录了四个功能运动筛选(FMS)练习的数据集。使用FMS标准通过物理治疗师评估运动执行。该数据集用于训练一个神经网络,该神经网络将正确的FMS分数分配给运动重复。我们使用由CNN,LSTM和密集层组成的架构。基于此框架,我们应用各种方法来优化网络的性能。为了进行优化,我们执行广泛的超参数优化。此外,我们正在比较已专门适用于IMU数据的不同CNN结构。最后,开发的网络通过不同的FMS练习的数据进行了培训,并比较了性能。 (3)结果:评估表明,所提出的方法在对已经是已知受试者的未知重复分类中实现了令人信服的表现。但是,受过训练的网络仍无法在先前未知的主题的数据上实现一致的性能。此外,可以看出,网络的性能会明显不同,具体取决于训练的练习。
(1) Background: The success of physiotherapy depends on the regular and correct performance of movement exercises. A system that automatically evaluates these could support the therapy. Previous approaches in this area rarely rely on Deep Learning methods and do not yet fully use their potential. (2) Methods: Using a measurement system consisting of 17 IMUs, a dataset of four Functional Movement Screening (FMS) exercises is recorded. Exercise execution is evaluated by physiotherapists using the FMS criteria. This dataset is used to train a neural network that assigns the correct FMS score to an exercise repetition. We use an architecture consisting of CNN, LSTM and Dense layers. Based on this framework, we apply various methods to optimize the performance of the network. For the optimization, we perform a extensive hyperparameter optimization. In addition, we are comparing different CNN structures that have been specifically adapted for use with IMU data. Finally, the developed network is trained with the data of different FMS exercises and the performance is compared. (3) Results: The evaluation shows that the presented approach achieves a convincing performance in the classification of unknown repetitions of already known subjects. However, the trained network is yet unable to achieve consistent performance on the data of a previously unknown subjects. Additionally, it can be seen that the performance of the network differs significantly depending on the exercise it is trained for.