| Literature DB >> 33557373 |
Tamon Miyake1, Shintaro Yamamoto2, Satoshi Hosono3, Satoshi Funabashi4, Zhengxue Cheng5, Cheng Zhang6,7, Emi Tamaki4, Shigeki Sugano1.
Abstract
Gait phase detection, which detects foot-contact and foot-off states during walking, is important for various applications, such as synchronous robotic assistance and health monitoring. Gait phase detection systems have been proposed with various wearable devices, sensing inertial, electromyography, or force myography information. In this paper, we present a novel gait phase detection system with static standing-based calibration using muscle deformation information. The gait phase detection algorithm can be calibrated within a short time using muscle deformation data by standing in several postures; it is not necessary to collect data while walking for calibration. A logistic regression algorithm is used as the machine learning algorithm, and the probability output is adjusted based on the angular velocity of the sensor. An experiment is performed with 10 subjects, and the detection accuracy of foot-contact and foot-off states is evaluated using video data for each subject. The median accuracy is approximately 90% during walking based on calibration for 60 s, which shows the feasibility of the static standing-based calibration method using muscle deformation information for foot-contact and foot-off state detection.Entities:
Keywords: gait phase detection; muscle deformation; static standing-based calibration
Mesh:
Year: 2021 PMID: 33557373 PMCID: PMC7914874 DOI: 10.3390/s21041081
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576