Significant features for human activity recognition using tri-axial accelerometers
Activity recognition using wearable sensors has become essential for a variety of applications. Tri-axial accelerometers are the most widely used sensor for activity recognition. Although various features have been used to capture patterns and classify the accelerometer signals to recognise activities, there is no consensus on the best features to choose. Reducing the number of features can reduce the computational cost and complexity and enhance the performance of the classifiers. This paper identifies the signal features that have significant discriminative power between different human activities. It also investigates the effect of sensor placement location, the sampling frequency, and activity complexity on the selected features. A comprehensive list of 193 signal features has been extracted from accelerometer signals of four publicly available datasets, including features that have never been used before for activity recognition. Feature significance was measured using the Joint Mutual Information Maximisation (JMIM) method. Common significant features among all the datasets were identified. The results show that the sensor placement location does not significantly affect recognition performance, nor does it affect the significant sub-set of features. The results also showed that with high sampling frequency, features related to signal repeatability and regularity show high discriminative power.
Funding
STRETCH: Socio-Technical Resilience for Enhancing Targeted Community Healthcare
Engineering and Physical Sciences Research Council
Find out more...SAUSE: Secure, Adaptive, Usable Software Engineering
Engineering and Physical Sciences Research Council
Find out more...SERVICE: Social and Emotional Resilience for the Vulnerable Impacted by the COVID-19 Emergency
UK Research and Innovation
Find out more...History
Publication
Sensors 22(19), 7482Publisher
MDPISustainable development goals
- (9) Industry, Innovation and Infrastructure
External identifier
Department or School
- Computer Science & Information Systems