Computer Science and Information Systems 2024 Volume 21, Issue 1, Pages: 95-116
https://doi.org/10.2298/CSIS230622003B
Full text ( 497 KB)
Activity recognition for elderly care using genetic search
Biswal Ankita (Dept. of Computer Science & Engineering, CUTM, Bhubaneswar, India), [email protected]
Panigrahi Chhabi Rani (Department of Computer Science, Rama Devi Women’s University, Bhubaneswar, India), [email protected]
Behera Anukampa (Department of Computer Science & Engineering, S’O’A Deemed to be University, Bhubaneswar, India), [email protected]
Nanda Sarmistha (Department of Computer Science & Engineering, Gandhi Engineering College, Bhubaneswar, India), [email protected]
Weng Tien-Hsiung (Department of Computer Science and Information Engineering, Providence University, Taichung, Taiwan), [email protected]
Pati Bibudhendu (Department of Computer Science, Rama Devi Women’s University, Bhubaneswar, India), [email protected]
Malu Chandan (iCETS, Infosys, Bhubaneswar, India), [email protected]
The advent of newer and better technologies has made Human Activity Recognition (HAR) highly essential in our daily lives. HAR is a classification problem where the activity of humans is classified by analyzing the data collected from various sources like sensors, cameras etc. for a period of time. In this work, we have proposed a model for activity recognition which will provide a substructure for the assisted living environment. We used a genetic search based feature selection for the management of the voluminous data generated from various embedded sensors such as accelerometer, gyroscope, etc. We evaluated the proposed model on a sensor-based dataset - Human Activities and Postural Transitions Recognition (HAPT) which is publically available. The proposed model yields an accuracy of 97.04% and is better as compared to the other existing classification algorithms on the basis of several considered evaluation metrics. In this paper, we have also presented a cloud based edge computing architecture for the deployment of the proposed model which will ensure faster and uninterrupted assisted living environment.
Keywords: Activity Recognition, HAR, Genetic Search Algorithm, HAPT, SMO, Edge Computing, Cloud Computing
Show references
Chernbumroong, S., Cang, S., Atkins, A., & Yu, H. Elderly activities recognition and classification for applications in assisted living. (Expert Systems with Applications, 2013), 40(5), 1662-1674., doi:10.1016/j.eswa.2012.09.004
World Population Ageing 2017 - Highlights ST/ESA/SER.A/397. (United Nations, Department of Economic and Social Affairs, Population Division 2017).
Burns, David M., and Cari M. Whyne. "Personalized Activity Recognition with Deep Triplet Embeddings.", (arXiv preprint arXiv:2001.05517, 2020)
Quiroz, Juan C., Amit Banerjee, Sergiu M. Dascalu, and Sian Lun Lau. "Feature selection for activity recognition from smartphone accelerometer data." (Intelligent Automation & Soft Computing, 2017): 1-9
Tang, Jiliang, Salem Alelyani, and Huan Liu. "Feature selection for classification: A review.", (Data classification: Algorithms and applications, 2014): 37
Bao L., Intille S.S., Activity Recognition from User-Annotated Acceleration Data. (Ferscha A., Mattern F. (eds) Pervasive Computing. Pervasive. Lecture Notes in Computer Science, vol 3001. Springer, Berlin, Heidelberg, 2004.) https://doi.org/10.1007/978-3-540-24646-6_1
Anguita, Davide & Ghio, Alessandro & Oneto, Luca & Parra, Xavier & Reyes-Ortiz, J. A Public Domain Dataset for Human Activity Recognition using Smartphones (2013)
Reyes-Ortiz JL., Oneto L., Ghio A., Samá A., Anguita D., Parra X., Human Activity Recognition on Smartphones with Awareness of Basic Activities and Postural Transitions. ( Wermter S. et al. (eds) Artificial Neural Networks and Machine Learning - ICANN 2014. ICANN 2014. Lecture Notes in Computer Science, vol 8681. Springer, Cham, 2014) https://doi.org/10.1007/978-3-319-11179-7_23
Liu, H., Zhou, M. and Liu, Q., An embedded feature selection method for imbalanced data classification.( IEEE/CAA Journal of AutomaticaSinica, 2019).6(3), pp.703-715
Hall, M. A. & Smith, L. A., Feature subset selection: a correlation based filter approach. (International Conference on Neural Information Processing and Intelligent Information Systems,. Berlin: Springer. 1997). pp. 855-858
Abolfazli, Saeid & Sanaei, Zohreh & Sanaei, Mohammad & Shojafar, Mohammad & Gani, Abdullah. Mobile cloud computing: the state-of-the-art, challenges, and future research, (Encyclopedia of Cloud Computing, 2015).
Kwon, Min-Cheol & Choi, Sunwoong. Recognition of Daily Human Activity Using an Artificial Neural Network and Smartwatch. (Wireless Communications and Mobile Computing, 2018). 1-9. 10.1155/2018/2618045.
Y. Zigel, D. Litvak and I. Gannot, A Method for Automatic Fall Detection of Elderly People Using Floor Vibrations and Sound-Proof of Concept on Human Mimicking Doll Falls, (IEEE Transactions on Biomedical Engineering, vol. 56, no. 12, pp. 2858-2867, 2009), doi: 10.1109/TBME.2009.2030171.
Chen, Liming, Chris D. Nugent, and Hui Wang., A knowledge-driven approach to activity recognition in smart homes. (IEEE Transactions on Knowledge and Data Engineering 24, no. 6, 2011): 961-974.
Brdiczka, Oliver & Langet, Matthieu & Maisonnasse, Jerome & Crowley, James. Detecting Human Behavior Models from Multimodal Observation in a Smart Home. (Automation Science and Engineering, IEEE Transactions on. 6. 588 - 597, 2009). 10.1109/TASE.2008.2004965. .
Yang, Chao, Wenxiang Jiang, and ZhongwenGuo. Time Series Data Classification Based on Dual Path CNN-RNN Cascade Network.(IEEE Access 7, 2019): 155304-155312.
Jain Ankita, and VivekKanhangad. Human activity classification in smartphones using accelerometer and gyroscope sensors. (IEEE Sensors Journal 18, no. 3, 2017): 1169-1177.
Ozcan, T., Basturk, A. Human action recognition with deep learning and structural optimization using a hybrid heuristic algorithm. (Cluster Comput 23, 2847-2860, 2020). doi:10.1007/s10586-020-03050-0
Walse, Kishor H., Rajiv V. Dharaskar, and Vilas M. Thakare. A study of human activity recognition using AdaBoost classifiers on WISDM dataset. (The Institute of Integrative Omics and Applied Biotechnology Journal 7, no. 2, 2016): 68-76.
Kutlay, Muhammed Ali, and SadinaGagula-Palalic., Application of machine learning in healthcare: Analysis on mhealth dataset. (Southeast Europe Journal of Soft Computing 4, no. 2, 2016).
Daniel Câmara, Evolution and Evolutionary Algorithms,Editor(s): Daniel Câmara, Bio-inspired Networking, (Elsevier, 2015), Pages 1-30, ISBN 9781785480218, doi:10.1016/B978-1-78548-021-8.50001-6.
Guk, & Han, Sang & Lim, Hyeongjun & Jeong, Ji hoon & Kang, Jang-Won & Jung, Sang-Chul., Evolution of Wearable Devices with Real-Time Disease Monitoring for Personalized Healthcare. (Nanomaterials, 2019). 9. 813. 10.3390/nano9060813.
Mo, Lingfei, Fan Li, Yanjia Zhu, and Anjie Huang., Human physical activity recognition based on computer vision with deep learning model., (IEEE International Instrumentation and Measurement Technology Conference Proceedings, 2016), pp. 1-6.
Shi, Yemin, YonghongTian, Yaowei Wang, and Tiejun Huang., Sequential deep trajectory descriptor for action recognition with three-stream CNN, ( IEEE Transactions on Multimedia 19, no. 7, 2017): 1510-1520.
Jalal, Ahmad, Shaharyar Kamal, and Daijin Kim., A Depth Video-based Human Detection and Activity Recognition using Multi-features and Embedded Hidden Markov Models for Health Care Monitoring Systems, ( International Journal of Interactive Multimedia & Artificial Intelligence 4, no. 4, 2017).
Taylor, William & Shah, Syed & Dashtipour, Kia & Zahid, Adnan & Abbasi, Qammer & Imran, Muhammad., An Intelligent Non-Invasive Real-Time Human Activity Recognition System for Next-Generation Healthcare, (Sensors. 2020) ; 20(9):2653. doi:10.3390/s20092653 2020).
K. Xia, J. Huang and H. Wang, LSTM-CNN Architecture for Human Activity Recognition, (IEEE Access, vol. 8, pp. 56855-56866, 2020), doi: 10.1109/ACCESS.2020.2982225.
Mekruksavanich, Sakorn & Jitpattanakul, Anuchit., LSTM Networks Using Smartphone Data for Sensor-Based Human Activity Recognition in Smart Homes. (Sensors. 21. 1636., 2021). 10.3390/s21051636.
[online] available at: http://www.cs.tufts.edu/~ablumer/weka/doc/weka.classifiers.SMO.html, last accessed: 21-07-2021
Montague, Enid, and Jie Xu, Understanding active and passive users: the effects of an active user using normal, hard and unreliable technologies on user assessment of trust in technology and co-user., (Applied ergonomics vol. 43,4 2012): 702-12. doi:10.1016/j.apergo.2011.11.002
Biswal, Ankita, Sarmistha Nanda, Chhabi Rani Panigrahi, Sanjeev K. Cowlessur, and Bibudhendu Pati., Human Activity Recognition Using Machine Learning: A Review., (Progress in Advanced Computing and Intelligent Engineering, 2021): 323-333.
Nanda, Sarmistha, Chhabi Rani Panigrahi, and BibudhenduPati., Emergency management systems using mobile cloud computing: A survey., (International Journal of Communication Systems 2020): e4619
Ahmed N, Rafiq JI, Islam MR. Enhanced Human Activity Recognition Based on Smartphone Sensor Data Using Hybrid Feature Selection Model (Sensors. 2020); 20(1):317. 10.3390/s20010317
Khan, Imran Ullah, Sitara Afzal, and Jong Weon Lee. "Human activity recognition via hybrid deep learning based model." Sensors 22, no. 1 (2022): 323.
Li, Yang & Guanci, Yang & Su, Zhidong & Li, Shaobo & Wang, Yang. Human activity recognition based on multienvironment sensor data. Information Fusion. 91. 47-63, 2022. 10.1016/j.inffus.2022.10.015.
Liu, G., Ma, J., Hu, T., & Gao, X. A feature selection method with feature ranking using genetic programming. Connection Science, 34(1), 1146-1168, 2022.
Yong, B., Wei, W., Li, K. C., Shen, J., Zhou, Q., Wozniak, M., Polap, D. & Damaševičius, R. Ensemble machine learning approaches for webshell detection in Internet of things environments. Transactions on Emerging Telecommunications Technologies, 33(6), e4085, 2022.
Hsieh, M. Y., Huang, T. C., Hung, J. C., & Li, K. C. Analysis of gesture combos for social activity on smartphone. In Future Information Technology-II (pp. 265-272), 2015, Springer Netherlands.
Hsieh, M. Y., Deng, D. J., Lin, W. D., Yeh, C. H., & Li, K. C. Self-decision activity in hierarchical wireless sensor networks. International Information Institute (Tokyo). Information, 15(2), 597, 2012.
Lin, Y., Liu, T., Chen, F., Li, K. C., & Xie, Y. An energy-efficient task migration scheme based on genetic algorithms for mobile applications in CloneCloud. The Journal of Supercomputing, 77, 5220-5236, 2021.