Abstract:
Assistance during sit-to-stand (SiSt) transitions for frail elderly may be provided by
powered orthotic devices. The control of the powered orthosis may be performed by the means
of electromyography (EMG), which requires direct contact of measurement electrodes to the skin.
The purpose of this study was to determine if a non-EMG-based method that uses inertial sensors
placed at different positions on the orthosis, and a lightweight pattern recognition algorithm may
accurately identify SiSt transitions without false positives. A novel method is proposed to eliminate
false positives based on a two-stage design: stage one detects the sitting posture; stage two recognizes
the initiation of a SiSt transition from a sitting position. The method was validated using data
from 10 participants who performed 34 different activities and posture transitions. Features were
obtained from the sensor signals and then combined into lagged epochs. A reduced number of
features was selected using a minimum-redundancy-maximum-relevance (mRMR) algorithm and
forward feature selection. To obtain a recognition model with low computational complexity, we
compared the use of an extreme learning machine (ELM) and multilayer perceptron (MLP) for both
stages of the recognition algorithm. Both classifiers were able to accurately identify all posture
transitions with no false positives. The average detection time was 0.19 ± 0.33 s for ELM and
0.13 ± 0.32 s for MLP. The MLP classifier exhibited less time complexity in the recognition phase
compared to ELM. However, the ELM classifier presented lower computational demands in the
training phase. Results demonstrated that the proposed algorithm could potentially be adopted to
control a powered orthosis.