基于深度学习融合算法的无标记点步态分析系统研究
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1.宁波大学体育学院;2.宁波大学体育学院大健康研究院;3.浙江财经大学信息管理与人工智能学院

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Markerless Gait Analysis System Based on Deep Learning Fusion model
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    摘要:

    目的:以有标记点三维运动捕捉系统(MoCap)为金标准,基于双向长短时记忆递归神经网络(Bi-lateral long short term memory,BiLSTM)和线性回归算法构建深度学习融合模型,减小深度传感器的系统误差,从而提高深度传感器下肢运动学分析的准确性。方法:招募10名健康男性大学生进行步态分析,应用MoCap系统和Kinect V2传感器同时采集数据。通过Cleveland Clinic及Kinect逆运动学模型分别计算下肢关节角度。以MoCap系统为目标,Kinect系统得到的角度为输入构建数据集,分别用BiLSTM算法和线性回归算法构建学习模型,得到系统误差修正后的下肢关节角度。采用留一交叉验证法本研究模型的性能。采用多重相关系数(Coefficient of Multiple Correlations,CMC)及均方根误差(Root Mean Square Error,RMSE)表示下肢关节角度波形曲线相似程度以及平均误差。结果:BiLSTM网络比线性回归算法更能够处理高度非线性的回归问题,尤其是在髋关节内收/外展、髋关节内旋/外旋和踝关节趾屈/背屈角度上。应用BiLSTM网络的误差修正算法显著地降低了Kinect的系统误差(RMSE<10°,其中髋关节的RMSE<5°),下肢角度波形呈现很好的一致性(除髖关节内旋/外旋角度外,CMC>0.7)。结论:本研究开发的基于深度学习融合模型的无标记点步态分析系统可以准确评估下肢运动学参数、关节活动能力、步行功能等,在临床和家庭康复中具有广泛的应用前景。

    Abstract:

    Objective: Taking the three-dimensional motion capture system (MoCap) as the gold standard, we develop a deep learning fusion model based on bi-lateral long short-term memory recurrent neural network (BiLSTM) and linear regression algorithm to reduce the system error of the Kinect sensor in lower limb kinematics measurement. Methods: We recruited ten healthy male college students for experiments. We simultaneously collected 3D dimensional coordinates of the reflective markers and the lower limb joint centers using a MoCap system and a Kinect V2 sensor, respectively. The joint angles of lower limbs are calculated using inverse kinematic model. We construct a dataset using the lower limb joint angles via the MoCap system as the target and the angles via the Kinect system as the input. We trained a BiLSTM network and a linear regression model for all lower limb angles. A leave-one subject-out cross-validation method is employed to study the performance of the models. The coefficient of multiple correlations (CMC) and root mean square error (RMSE) are used to investigate the similarity and the mean deviation between the joint angle waveforms via the MoCap and the Kinect system. Results: In comparison with the linear regression algorithm, the BiLSTM has better performance in refining lower limb kinematics due to its ability of dealing highly nonlinear regression problems. Our deep learning refined model significantly reduces the system error of Kinect. The mean RMSEs for all joint angles are mainly less than 10°, and the RMSEs of the hip joint are less than 5°. The joint angle waveforms present very good similarity with the golden standard with the CMCs of greater than 0.7 except for hip rotation angle. Conclusions: The deep learning fusion model based markerless gait analysis system developed in this study can accurately assess lower limb kinematics, joint mobility, walking functions, and has potential to be a cheap, easy-to-use alternative tool for clinical and home rehabilitation.

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  • 收稿日期:2021-05-03
  • 最后修改日期:2021-09-09
  • 录用日期:2021-09-23
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