Deep-Learning-Based Emergency Stop Prediction for Robotic Lower-Limb Rehabilitation Training Systems

被引:4
作者
Cha, Baekdong [1 ]
Lee, Kyung-Hwan [2 ]
Ryu, Jeha [1 ,3 ]
机构
[1] Gwangju Inst Sci & Technol GIST, Sch Integrated Technol, Gwangju 61005, South Korea
[2] P&S Mech Co Ltd, Seoul 07294, South Korea
[3] Gwangju Inst Sci & Technol GIST, Artificial Intelligence Grad Sch Program GIST, Gwangju 61005, South Korea
关键词
Training; Robots; Legged locomotion; Hip; Torque; Predictive models; Rehabilitation robotics; Deep learning; emergency stop prediction; robotic lower-limb rehabilitation; time series prediction; GAIT; CLASSIFICATION; KINEMATICS; LSTM;
D O I
10.1109/TNSRE.2021.3087725
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Robotic lower-limb rehabilitation training is a better alternative for the physical training efforts of a therapist due to advantages, such as intensive repetitive motions, economical therapy, and quantitative assessment of the level of motor recovery through the measurement of force and movement patterns. However, in actual robotic rehabilitation training, emergency stops occur frequently to prevent injury to patients. However, frequent stopping is a waste of time and resources of both therapists and patients. Therefore, early detection of emergency stops in real-time is essential to take appropriate actions. In this paper, we propose a novel deep-learning-based technique for detecting emergency stops as early as possible. First, a bidirectional long short-term memory prediction model was trained using only the normal joint data collected from a real robotic training system. Next, a real-time threshold-based algorithm was developed with cumulative error. The experimental results revealed a precision of 0.94, recall of 0.93, and F1 score of 0.93. Additionally, it was observed that the prediction model was robust for variations in measurement noise.
引用
收藏
页码:1120 / 1128
页数:9
相关论文
共 23 条
[1]   Prediction of Gait Freezing in Parkinsonian Patients: A Binary Classification Augmented With Time Series Prediction [J].
Arami, Arash ;
Poulakakis-Daktylidis, Antonios ;
Tai, Yen F. ;
Burdet, Etienne .
IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2019, 27 (09) :1909-1919
[2]   Kinematics and Kinetics of Gait: From Lab to Clinic [J].
Dicharry, Jay .
CLINICS IN SPORTS MEDICINE, 2010, 29 (03) :347-+
[3]   Framewise phoneme classification with bidirectional LSTM and other neural network architectures [J].
Graves, A ;
Schmidhuber, J .
NEURAL NETWORKS, 2005, 18 (5-6) :602-610
[4]   Effects of Walkbot gait training on kinematics, kinetics, and clinical gait function in paraplegia and quadriplegia [J].
Hwang, Jongseok ;
Shin, Yongil ;
Park, Ji-ho ;
Cha, Young Joo ;
You, Joshua H. .
NEUROREHABILITATION, 2018, 42 (04) :481-489
[5]   Another look at measures of forecast accuracy [J].
Hyndman, Rob J. ;
Koehler, Anne B. .
INTERNATIONAL JOURNAL OF FORECASTING, 2006, 22 (04) :679-688
[6]  
Ioffe S, 2015, PR MACH LEARN RES, V37, P448
[7]   Validity and feasibility of intelligent Walkbot system [J].
Jung, J. -H. ;
Lee, N. -G. ;
You, J. -H. ;
Lee, D. -C. .
ELECTRONICS LETTERS, 2009, 45 (20) :1016-U13
[8]   Normal and pathological gait classification LSTM model [J].
Khokhlova, Margarita ;
Migniot, Cyrille ;
Morozov, Alexey ;
Sushkova, Olga ;
Dipanda, Albert .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2019, 94 :54-66
[9]   Real-Time Human Ambulation, Activity, and Physiological Monitoring: Taxonomy of Issues, Techniques, Applications, Challenges and Limitations [J].
Khusainov, Rinat ;
Azzi, Djamel ;
Achumba, Ifeyinwa E. ;
Bersch, Sebastian D. .
SENSORS, 2013, 13 (10) :12852-12902
[10]  
Kingma DP, 2015, C TRACK P