Author:
Wang Man,Liu Rutong,Xiong Yong
Abstract
Abstract
This study aims to utilize data from built-in sensors in smartphones for human activity recognition. By analyzing the three-dimensional accelerometer and gyroscope data in user behavior, accurate classification of eight common activity states is achieved, including walking, standing, sitting, squatting, going up stairs, going down stairs, climbing ladders, and descending ladders. To enhance the model’s generalization capability, a method combining Transformer neural networks with one-dimensional Convolutional Neural Networks (CNNs) is employed, along with data sample augmentation. Experimental results demonstrate a significant improvement in recognition accuracy compared to traditional models, indicating the potential for real-time application on smartphones and other devices. This approach provides essential technical support for predictive human-computer interaction on smart devices and holds extensive application prospects.
Reference10 articles.
1. Toward automatic activity classification and movement assessment during a sports training session [J];Ahmadi;IEEE Internet of Things Journal,2014
2. RSSI-based indoor localization and identification for ZigBee wireless sensor networks in smart homes [J];Bianchi;IEEE Transactions on Instrumentation and Measurement,2018
3. Enabling loT for in-home rehabilitation: Accelerometer signals classification methods for activity and movement recognition J;Bisio;IEEE Internet of Things Journal
4. Authentication of smartphone users based on activity recognition and mobile sensing;Ehatisham-ul-Haq;Sensors,2017