
Estudio de bases de datos para el reconocimiento automático de lenguas de signos
Author(s) -
Darío Tilves Santiago,
Carmén García Mateo,
Soledad Torres-Guijarro,
Laura Docío Fernández,
José Luis Alba-Castro
Publication year - 2020
Publication title -
hesperia
Language(s) - English
Resource type - Journals
eISSN - 2952-3990
pISSN - 1139-3181
DOI - 10.35869/hafh.v23i0.1658
Subject(s) - computer science , annotation , natural language processing , sign (mathematics) , artificial intelligence , sign language , task (project management) , linguistics , mathematics , engineering , mathematical analysis , philosophy , systems engineering
Automatic sign language recognition (ASLR) is quite a complex task, not only for the difficulty of dealing with very dynamic video information, but also because almost every sign language (SL) can be considered as an under-resourced language when it comes to language technology. Spanish sign language (LSE) is one of those under-resourced languages. Developing technology for SSL implies a number of technical challenges that must be tackled down in a structured and sequential manner. In this paper, some problems of machine-learning- based ASLR are addressed. A review of publicly available datasets is given and a new one is presented. It is also discussed the current annotations methods and annotation programs. In our review of existing datasets, our main conclusion is that there is a need for more with high-quality data and annotations.