Inertial Data-Based AI Approaches for ADL and Fall Recognition

被引:10
作者
Martins, Luis M. [1 ,2 ,3 ]
Ribeiro, Nuno Ferrete [1 ,2 ,3 ,4 ]
Soares, Filipa [1 ,2 ,3 ]
Santos, Cristina P. [1 ,2 ,3 ]
机构
[1] Univ Minho, Ctr MicroElectroMech Syst CMEMS, P-4800058 Guimaraes, Portugal
[2] LABBELS Associate Lab, P-4710057 Braga, Portugal
[3] LABBELS Associate Lab, P-4710058 Guimaraes, Portugal
[4] Univ Minho, Sch Engn, MIT Portugal Program, P-4800058 Guimaraes, Portugal
关键词
activity recognition; falls; feature selection; dataset fusion; Machine Learning; deep learning; FEATURE-SELECTION; CLASSIFICATION; SENSORS;
D O I
10.3390/s22114028
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The recognition of Activities of Daily Living (ADL) has been a widely debated topic, with applications in a vast range of fields. ADL recognition can be accomplished by processing data from wearable sensors, specially located at the lower trunk, which appears to be a suitable option in uncontrolled environments. Several authors have addressed ADL recognition using Artificial Intelligence (AI)-based algorithms, obtaining encouraging results. However, the number of ADL recognized by these algorithms is still limited, rarely focusing on transitional activities, and without addressing falls. Furthermore, the small amount of data used and the lack of information regarding validation processes are other drawbacks found in the literature. To overcome these drawbacks, a total of nine public and private datasets were merged in order to gather a large amount of data to improve the robustness of several ADL recognition algorithms. Furthermore, an AI-based framework was developed in this manuscript to perform a comparative analysis of several ADL Machine Learning (ML)-based classifiers. Feature selection algorithms were used to extract only the relevant features from the dataset's lower trunk inertial data. For the recognition of 20 different ADL and falls, results have shown that the best performance was obtained with the K-NN classifier with the first 85 features ranked by Relief-F (98.22% accuracy). However, Ensemble Learning classifier with the first 65 features ranked by Principal Component Analysis (PCA) presented 96.53% overall accuracy while maintaining a lower classification time per window (0.039 ms), showing a higher potential for its usage in real-time scenarios in the future. Deep Learning algorithms were also tested. Despite its outcomes not being as good as in the prior procedure, their potential was also demonstrated (overall accuracy of 92.55% for Bidirectional Long Short-Term Memory (LSTM) Neural Network), indicating that they could be a valid option in the future.
引用
收藏
页数:20
相关论文
共 56 条
[1]   Effects of Distance Measure Choice on K-Nearest Neighbor Classifier Performance: A Review [J].
Abu Alfeilat, Haneen Arafat ;
Hassanat, Ahmad B. A. ;
Lasassmeh, Omar ;
Tarawneh, Ahmad S. ;
Alhasanat, Mahmoud Bashir ;
Salman, Hamzeh S. Eyal ;
Prasath, V. B. Surya .
BIG DATA, 2019, 7 (04) :221-248
[2]   Human activity recognition using improved complete ensemble EMD with adaptive noise and long short-term memory neural networks [J].
Altuve, Miguel ;
Lizarazo, Paula ;
Villamizar, Javier .
BIOCYBERNETICS AND BIOMEDICAL ENGINEERING, 2020, 40 (03) :901-909
[3]  
[Anonymous], 2002, Principal Component Analysis, DOI DOI 10.1007/B98835
[4]  
[Anonymous], 2013, 21TH EUROPEAN S ARTI
[5]   CHARM-Deep: Continuous Human Activity Recognition Model Based on Deep Neural Network Using IMU Sensors of Smartwatch [J].
Ashry, Sara ;
Ogawa, Tetsuji ;
Gomaa, Walid .
IEEE SENSORS JOURNAL, 2020, 20 (15) :8757-8770
[6]   Physical Activity Classification for Elderly People in Free-Living Conditions [J].
Awais, Muhammad ;
Chiari, Lorenzo ;
Ihlen, Espen Alexander F. ;
Helbostad, Jorunn L. ;
Palmerini, Luca .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2019, 23 (01) :197-207
[7]   Wearable Assistant for Parkinson's Disease Patients With the Freezing of Gait Symptom [J].
Baechlin, Marc ;
Plotnik, Meir ;
Roggen, Daniel ;
Maidan, Inbal ;
Hausdorff, Jeffrey M. ;
Giladi, Nir ;
Troester, Gerhard .
IEEE TRANSACTIONS ON INFORMATION TECHNOLOGY IN BIOMEDICINE, 2010, 14 (02) :436-446
[8]   From Offline to Real-Time Distributed Activity Recognition in Wireless Sensor Networks for Healthcare: A Review [J].
Baghezza, Rani ;
Bouchard, Kevin ;
Bouzouane, Abdenour ;
Gouin-Vallerand, Charles .
SENSORS, 2021, 21 (08)
[9]   Window Size Impact in Human Activity Recognition [J].
Banos, Oresti ;
Galvez, Juan-Manuel ;
Damas, Miguel ;
Pomares, Hector ;
Rojas, Ignacio .
SENSORS, 2014, 14 (04) :6474-6499
[10]  
Bradley P. S., 1998, Machine Learning. Proceedings of the Fifteenth International Conference (ICML'98), P82