Projects per year
Abstract
Human gait is a key biomarker for health, independence and quality of life. Advances in wearable inertial sensor technologies have paved the way for out-of-the-lab human gait analysis, which is important for the assessment of mobility and balance in natural environments and has applications in multiple fields from healthcare to urban planning. Automatic recognition of the environment where walking takes place is a prerequisite for successful characterisation of terrain-induced gait alterations. A key question which remains unexplored in the field is how minimum data requirements for high terrain classification accuracy change depending on the sensor placement on the body. To address this question, we evaluate the changes in performance of five canonical machine learning classifiers by varying several data sampling parameters including sampling rate, segment length, and sensor configuration. Our analysis on two independent datasets clearly demonstrate that a single inertial measurement unit is sufficient to recognise terrain-induced gait alterations, accuracy and minimum data requirements vary with the device position on the body, and choosing correct data sampling parameters for each position can improve classification accuracy up to 40% or reduce data size by 16 times. Our findings highlight the need for adaptive data collection and processing algorithms for resource-efficient computing on mobile devices.
Original language | English |
---|---|
Article number | 101994 |
Number of pages | 17 |
Journal | Pervasive and Mobile Computing |
Volume | 105 |
Early online date | 25 Oct 2024 |
DOIs | |
Publication status | Published - 31 Dec 2024 |
Keywords
- Accelerometer
- And digital health
- Gait
- Gyroscope
- IMU
- Machine learning
- Mobile app
- Outdoor walking
- Sampling rate
- Smartphone
- Terrain recognition
- Wearable
Fingerprint
Dive into the research topics of 'Minimum data sampling requirements for accurate detection of terrain-induced gait alterations change with mobile sensor position'. Together they form a unique fingerprint.-
iNavigate - Brain-inspired technologies for intelligent navigation and mobility
Akanyeti, O. (PI)
01 Dec 2019 → 31 May 2025
Project: Externally funded research
-
HCRW: Automatic Assessment of Gait Impairement and Recovery in Stroke
Akanyeti, O. (PI)
Health and Care Research Wales
01 Oct 2020 → 30 Sept 2023
Project: Externally funded research