Mathematics (Aug 2022)

Use of Spherical and Cartesian Features for Learning and Recognition of the Static Mexican Sign Language Alphabet

  • Homero V. Rios-Figueroa,
  • Angel J. Sánchez-García,
  • Candy Obdulia Sosa-Jiménez,
  • Ana Luisa Solís-González-Cosío

DOI
https://doi.org/10.3390/math10162904
Journal volume & issue
Vol. 10, no. 16
p. 2904

Abstract

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The automatic recognition of sign language is very important to allow for communication by hearing impaired people. The purpose of this study is to develop a method of recognizing the static Mexican Sign Language (MSL) alphabet. In contrast to other MSL recognition methods, which require a controlled background and permit changes only in 2D space, our method only requires indoor conditions and allows for variations in the 3D pose. We present an innovative method that can learn the shape of each of the 21 letters from examples. Before learning, each example in the training set is normalized in the 3D pose using principal component analysis. The input data are created with a 3D sensor. Our method generates three types of features to represent each shape. When applied to a dataset acquired in our laboratory, an accuracy of 100% was obtained. The features used by our method have a clear, intuitive geometric interpretation.

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