Handshape recognition for Argentinian Sign Language using ProbSom

Franco Ronchetti, Facundo Manuel Quiroga, César Estrebou, Laura Lanzarini

2023-10-26Journal of Computer Science and Technology (JCST) 2016 4Sign Language Recognition

Abstract

Automatic sign language recognition is an important topic within the areas of human-computer interaction and machine learning. On the one hand, it poses a complex challenge that requires the intervention of various knowledge areas, such as video processing, image processing, intelligent systems and linguistics. On the other hand, robust recognition of sign language could assist in the translation process and the integration of hearing-impaired people. This paper offers two main contributions: first, the creation of a database of handshapes for the Argentinian Sign Language (LSA), which is a topic that has barely been discussed so far. Secondly, a technique for image processing, descriptor extraction and subsequent handshape classification using a supervised adaptation of self-organizing maps that is called ProbSom. This technique is compared to others in the state of the art, such as Support Vector Machines (SVM), Random Forests, and Neural Networks. The database that was built contains 800 images with 16 LSA handshapes, and is a first step towards building a comprehensive database of Argentinian signs. The ProbSom-based neural classifier, using the proposed descriptor, achieved an accuracy rate above 90%.

Results

TaskDatasetMetricValueModel
HandLSA16Accuracy 92.3ProbSom w/ Radon Features
Gesture RecognitionLSA16Accuracy 92.3ProbSom w/ Radon Features

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