Application of Context-dependent Interpretation of Biosignals Recognition to Control a Bionic Multifunctional Hand Prosthesis
Journal:
arXiv
Published Date:
Feb 18, 2025
Abstract
The paper presents an original method for controlling a
surface-electromyography-driven (sEMG) prosthesis. A context-dependent
recognition system is proposed in which the same class of sEMG signals may have
a different interpretation, depending on the context. This allowed the
repertoire of performed movements to be increased. The proposed structure of
the context-dependent recognition system includes unambiguously defined
decision sequences covering the overall action of the prosthesis, i.e. the
so-called boxes. Because the boxes are mutually isolated environments, each box
has its own interpretation of the recognition result, as well as a separate
local-recognition-task-focused classifier.
Due to the freedom to assign contextual meanings to classes of biosignals,
the construction procedure of the classifier can be optimised in terms of the
local classification quality in a given box or the classification quality of
the entire system. In the paper, two optimisation problems are formulated,
differing in the adopted constraints on optimisation variables, with the
methods of solving the problems based on an exhaustive search and an
evolutionary algorithm, being developed.
Experimental studies were conducted using signals from 1 able-bodied person
with simulation of amputation and 10 volunteers with transradial amputations.
The study compared the classical recognition system and the context-dependent
system for various classifier models. An unusual testing strategy was adopted
in the research, taking into account the specificity of the considered
recognition task, with two original quality measures resulting from this scheme
then being applied. The results obtained confirm the hypothesis that the
application of the context-dependent classifier led to an improvement in
classification quality.