1. A lightweight deep learning model for human activity recognition on edge devices;Agarwal;Procedia Computer Science,2020
2. Bidirectional gated recurrent units for human activity recognition using accelerometer data;Alsarhan;Proceedings of IEEE Sensors,2019
3. Human activity recognition using temporal convolutional neural network architecture;Andrade-Ambriz;Expert Systems with Applications,2022
4. Anguita, D., Ghio, A., Oneto, L., Parra, X., & Reyes-Ortiz, J. (2013). A public domain dataset for human activity recognition using smartphones. In ESANN 2013 proceedings, 21st European symposium on artificial neural networks, computational intelligence and machine learning. URL: https://arpi.unipi.it/handle/11568/962613#.YURiF7gzZEY.
5. Asim, M., Zhu, M., & Javed, M. (2017). CNN based spatio-temporal feature extraction for face anti-spoofing. In 2017 2nd international conference on image, vision and computing, ICIVC 2017 (pp. 234–238). http://dx.doi.org/10.1109/ICIVC.2017.7984552.