4.6 Article

Real-Time Gait Phase Detection Using Wearable Sensors for Transtibial Prosthesis Based on a kNN Algorithm

Journal

SENSORS
Volume 22, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/s22114242

Keywords

k-nearest neighbor; wearable sensor; gait analysis; gait phase detection; transtibial prosthesis

Funding

  1. Suranaree University of Technology (SUT), Thailand Science Research and Innovation (TSRI)
  2. National Science Research and Innovation Fund (NSRF) [42852]

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Traditional prostheses lack control mechanisms and algorithms, making it difficult for wearers to walk. To address this issue, we developed a wearable insole device with a sensor that uses the kNN algorithm for real-time gait phase detection, improving control and accuracy.
Those with disabilities who have lost their legs must use a prosthesis to walk. However, traditional prostheses have the disadvantage of being unable to move and support the human gait because there are no mechanisms or algorithms to control them. This makes it difficult for the wearer to walk. To overcome this problem, we developed an insole device with a wearable sensor for real-time gait phase detection based on the kNN (k-nearest neighbor) algorithm for prosthetic control. The kNN algorithm is used with the raw data obtained from the pressure sensors in the insole to predict seven walking phases, i.e., stand, heel strike, foot flat, midstance, heel off, toe-off, and swing. As a result, the predictive decision in each gait cycle to control the ankle movement of the transtibial prosthesis improves with each walk. The results in this study can provide 81.43% accuracy for gait phase detection, and can control the transtibial prosthetic effectively at the maximum walking speed of 6 km/h. Moreover, this insole device is small, lightweight and unaffected by the physical factors of the wearer.

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