Litcius/Paper detail

Mind the Steps

Michael Iber, Bernhard Dumphart, Victor Adriel de Jesus Oliveira, Stefan Ferstl, Joschua M. Reis, Djordje Slijepčević, Mario Heller, Anna-Maria Raberger, Brian Horsak

202111 citationsDOI

Abstract

We describe a proof-of-concept for the implementation of a mobile auditory biofeedback system based on automated classification of functional gait disorders. The classification is embedded in a sensor-instrumented insole and is based on ground reaction forces (GRFs). GRF data have been successfully used for the classification of gait patterns into clinically relevant classes and are frequently used in clinical practice to quantitatively describe human motion. A feed-forward neural network that was implemented on the firmware of the insole is used to estimate the GRFs using pressure and accelerator data. Compared to GRF measurements obtained from force plates, the estimated GRFs performed highly accurately. To distinguish between normal physiological gait and gait disorders, we trained and evaluated a support vector machine with labeled data from a publicly accessible database. The automated gait classification was sonified for auditory feedback. The high potential of the implemented auditory feedback for preventive and supportive applications in physical therapy, such as supervised therapy settings and tele-rehabilitation, was highlighted by a semi-structured interview with two experts.

Topics & Concepts

BiofeedbackGround reaction forceGaitComputer scienceFirmwareMotion captureExoskeletonGait analysisArtificial neural networkSupport vector machineAudio feedbackArtificial intelligenceProof of conceptMachine learningPhysical medicine and rehabilitationSimulationMotion (physics)EngineeringMedicineOperating systemComputer hardwarePhysicsKinematicsElectrical engineeringClassical mechanicsMuscle activation and electromyography studiesBalance, Gait, and Falls PreventionNon-Invasive Vital Sign Monitoring