A novel Approach for sEMG Gesture Recognition using Resource-constrained Hardware Platforms

Classifying human gestures using surface electromyografic sensors (sEMG) is a challenging task. Wearable sensors have proven to be extremely useful in this context, but their performance is limited by several factors (signal noise, computing resources, battery consumption, etc.). In particular, comp...

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Bibliographic Details
Authors: Micheletto, Matías Javier, Chesñevar, Carlos Iván, Santos, Rodrigo Martin
Format: article
Status:Published version
Publication Date:2022
Country:Argentina
Institution:Consejo Nacional de Investigaciones Científicas y Técnicas
Repository:CONICET Digital (CONICET)
Language:English
OAI Identifier:oai:ri.conicet.gov.ar:11336/200891
Online Access:http://hdl.handle.net/11336/200891
Access Level:Open access
Keyword:AUTOENCODER
DECISION TREES
GESTURE RECOGNITION
NEAREST NEIGHBOORS
SEMG
https://purl.org/becyt/ford/1.2
https://purl.org/becyt/ford/1
Description
Summary:Classifying human gestures using surface electromyografic sensors (sEMG) is a challenging task. Wearable sensors have proven to be extremely useful in this context, but their performance is limited by several factors (signal noise, computing resources, battery consumption, etc.). In particular, computing resources impose a limitation in many application scenarios, in which lightweight classification approaches are desirable. Recent research has shown that machine learning techniques are useful for human gesture classification once their salient features have been determined. This paper presents a novel approach for human gesture classification in which two different strategies are combined: a) a technique based on autoencoders is used to perform feature extraction; b) two alternative machine learning algorithms (namely J48 and K*) are then used for the classification stage. Empirical results are provided, showing that for limited computing power platforms our approach outperforms other alternative methodologies.