Lower Limb Locomotion Activity Recognition of Healthy Individuals Using Semi-Markov Model and Single Wearable Inertial Sensor

被引:8
作者
Li, Haoyu [1 ]
Derrode, Stephane [1 ]
Pieczynski, Wojciech [2 ]
机构
[1] Ecole Cent Lyon, CNRS, LIRIS, UMR 5205, F-69130 Ecully, France
[2] Telecom SudParis, CNRS, SAMOVAR, Inst Polytech Paris,UMR 5157, F-91011 Evry, France
关键词
gait analysis; lower limb locomotion activity; triplet Markov model; semi-Markov model; on-line EM algorithm; SEGMENTATION; ALGORITHM;
D O I
10.3390/s19194242
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Lower limb locomotion activity is of great interest in the field of human activity recognition. In this work, a triplet semi-Markov model-based method is proposed to recognize the locomotion activities of healthy individuals when lower limbs move periodically. In the proposed algorithm, the gait phases (or leg phases) are introduced into the hidden states, and Gaussian mixture density is introduced to represent the complex conditioned observation density. The introduced sojourn state forms the semi-Markov structure, which naturally replicates the real transition of activity and gait during motion. Then, batch mode and on-line Expectation-Maximization (EM) algorithms are proposed, respectively, for model training and adaptive on-line recognition. The algorithm is tested on two datasets collected from wearable inertial sensors. The batch mode recognition accuracy reaches up to 95.16%, whereas the adaptive on-line recognition gradually obtains high accuracy after the time required for model updating. Experimental results show an improvement in performance compared to the other competitive algorithms.
引用
收藏
页数:19
相关论文
共 37 条
[21]   Real-Time Hybrid Locomotion Mode Recognition for Lower Limb Wearable Robots [J].
Parri, Andrea ;
Yuan, Kebin ;
Marconi, Dario ;
Yan, Tingfang ;
Crea, Simona ;
Munih, Marko ;
Lova, Raffaele Molino ;
Vitiello, Nicola ;
Wang, Qining .
IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2017, 22 (06) :2480-2491
[22]   Triplet Markov Chains in hidden signal restoration [J].
Pieczynski, W ;
Hulard, C ;
Veit, T .
IMAGE AND SIGNAL PROCESSING FOR REMOTE SENSING VIII, 2003, 4885 :58-68
[23]   Recent trends in machine learning for human activity recognition-A survey [J].
Ramasamy Ramamurthy, Sreenivasan ;
Roy, Nirmalya .
WILEY INTERDISCIPLINARY REVIEWS-DATA MINING AND KNOWLEDGE DISCOVERY, 2018, 8 (04)
[24]   An Adaptive Algorithm to Improve Energy Efficiency in Wearable Activity Recognition Systems [J].
Rezaie, Hamed ;
Ghassemian, Mona .
IEEE SENSORS JOURNAL, 2017, 17 (16) :5315-5323
[25]  
Roggen D., 2010, 2010 Seventh International Conference on Networked Sensing Systems (INSS 2010), P233, DOI 10.1109/INSS.2010.5573462
[26]   Autonomous Training of Activity Recognition Algorithms in Mobile Sensors: A Transfer Learning Approach in Context-Invariant Views [J].
Rokni, Seyed Ali ;
Ghasemzadeh, Hassan .
IEEE TRANSACTIONS ON MOBILE COMPUTING, 2018, 17 (08) :1764-1777
[27]   Human activity recognition with smartphone sensors using deep learning neural networks [J].
Ronao, Charissa Ann ;
Cho, Sung-Bae .
EXPERT SYSTEMS WITH APPLICATIONS, 2016, 59 :235-244
[28]  
Sathyanarayana A., 2016, 160707034 ARXIV
[29]  
Schneider Tizian, 2018, 2018 IEEE International Instrumentation and Measurement Technology Conference (I2MTC), DOI 10.1109/I2MTC.2018.8409763
[30]   Unobtrusive Monitoring the Daily Activity Routine of Elderly People Living Alone, with Low-Cost Binary Sensors [J].
Susnea, Ioan ;
Dumitriu, Luminita ;
Talmaciu, Mihai ;
Pecheanu, Emilia ;
Munteanu, Dan .
SENSORS, 2019, 19 (10)