Intelligent Human–Computer Interaction: Combined Wrist and Forearm Myoelectric Signals for Handwriting Recognition

Author:

Tigrini Andrea1ORCID,Ranaldi Simone2ORCID,Verdini Federica1ORCID,Mobarak Rami1ORCID,Scattolini Mara1ORCID,Conforto Silvia2ORCID,Schmid Maurizio2ORCID,Burattini Laura1ORCID,Gambi Ennio1ORCID,Fioretti Sandro1ORCID,Mengarelli Alessandro1ORCID

Affiliation:

1. Department of Information Engineering, Università Politecnica delle Marche, 60131 Ancona, Italy

2. Deparment of Industrial, Electronics and Mechanical Engineering, Roma Tre University, 00146 Rome, Italy

Abstract

Recent studies have highlighted the possibility of using surface electromyographic (EMG) signals to develop human–computer interfaces that are also able to recognize complex motor tasks involving the hand as the handwriting of digits. However, the automatic recognition of words from EMG information has not yet been studied. The aim of this study is to investigate the feasibility of using combined forearm and wrist EMG probes for solving the handwriting recognition problem of 30 words with consolidated machine-learning techniques and aggregating state-of-the-art features extracted in the time and frequency domains. Six healthy subjects, three females and three males aged between 25 and 40 years, were recruited for the study. Two tests in pattern recognition were conducted to assess the possibility of classifying fine hand movements through EMG signals. The first test was designed to assess the feasibility of using consolidated myoelectric control technology with shallow machine-learning methods in the field of handwriting detection. The second test was implemented to assess if specific feature extraction schemes can guarantee high performances with limited complexity of the processing pipeline. Among support vector machine, linear discriminant analysis, and K-nearest neighbours (KNN), the last one showed the best classification performances in the 30-word classification problem, with a mean accuracy of 95% and 85% when using all the features and a specific feature set known as TDAR, respectively. The obtained results confirmed the validity of using combined wrist and forearm EMG data for intelligent handwriting recognition through pattern recognition approaches in real scenarios.

Funder

DM MiSE 5 Marzo 2018 project ChAALenge

project Vitality

National Recovery and Resilience Plan

the European Union—NextGenerationEU

Publisher

MDPI AG

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