An On-Node Processing Approach for Anomaly Detection in Gait

作者:Cola Guglielmo*; Avvenuti Marco; Vecchio Alessio; Yang Guang Zhong; Lo Benny
来源:IEEE Sensors Journal, 2015, 15(11): 6640-6649.
DOI:10.1109/JSEN.2015.2464774

摘要

A novel method is proposed for capturing deviation in gait using a wearable accelerometer. Previous research has outlined the importance of gait analysis to assess frailty and fall risk in elderly patients. Several solutions, based on wearable sensors, have been proposed to assist geriatricians in mobility assessment tests, such as the Timed Up-and-Go test. However, these methods can only be applied to supervised scenarios and do not allow continuous and unobtrusive monitoring of gait. The method we propose is designed to achieve continuous monitoring of gait in a completely unsupervised fashion, requiring the use of a single waist-mounted accelerometer. The user's gait patterns are automatically learned using specific acceleration-based features, while anomaly detection is used to capture subtle changes in the way the user walks. All the required processing can be executed in real time on the wearable device. The method was evaluated with 30 volunteers, who simulated a knee flexion impairment. On average, our method obtained similar to 84% accuracy in the recognition of abnormal gait segments lasting similar to 5 s. Prompt detection of gait anomalies could enable early intervention and prevent falls.

  • 出版日期2015-11