Despite the increasing use of technology, handwriting has remained to date as an efficient means of communication. Certainly, handwriting is a critical motor skill for childrens cognitive development and academic success. This article presents a new methodology based on electromyographic signals to recognize multi-user free-style multi-stroke handwriting characters. The approach proposes using powerful Deep Learning (DL) architectures for feature extraction and sequence recognition, such as convolutional and recurrent neural networks. This framework was thoroughly evaluated, obtaining an accuracy of 94.85%. The development of handwriting devices can be potentially applied in the creation of artificial intelligence applications to enhance co...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Digitizing handwriting is mostly performed using either image-based methods, such as optical charact...
Online handwriting recognition has been the subject of research for many years. Despite that, a limi...
Investigation on the feasibility of various character features extracted for handwritten character r...
Investigation on the feasibility of various character features extracted for handwritten character r...
Despite all of the technical advancements in writing and text editing with keyboards on numerous dev...
Abstract — This paper focuses on a specific word recognition technique for an online handwriting rec...
Handwriting disorder (termed dysgraphia) is a far from a singular problem as nearly 8.6% of the popu...
Cet article est en open-access archive, avant publicationHandwriting disorder (termed dysgraphia) is...
International audienceIn this paper a new and original framework for handwriting to speech devices i...
Cet article est en open-access archive, avant publicationHandwriting disorder (termed dysgraphia) is...
The work deals with the issue of handrwritten text recognition problem with deep neural networks. It...
Making a computer understand handwritten text and symbols have numerous applications ranging from re...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Digitizing handwriting is mostly performed using either image-based methods, such as optical charact...
Online handwriting recognition has been the subject of research for many years. Despite that, a limi...
Investigation on the feasibility of various character features extracted for handwritten character r...
Investigation on the feasibility of various character features extracted for handwritten character r...
Despite all of the technical advancements in writing and text editing with keyboards on numerous dev...
Abstract — This paper focuses on a specific word recognition technique for an online handwriting rec...
Handwriting disorder (termed dysgraphia) is a far from a singular problem as nearly 8.6% of the popu...
Cet article est en open-access archive, avant publicationHandwriting disorder (termed dysgraphia) is...
International audienceIn this paper a new and original framework for handwriting to speech devices i...
Cet article est en open-access archive, avant publicationHandwriting disorder (termed dysgraphia) is...
The work deals with the issue of handrwritten text recognition problem with deep neural networks. It...
Making a computer understand handwritten text and symbols have numerous applications ranging from re...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...
Online signals are rich in dynamic features such as trajectory chronology, velocity, pressure and pe...