Spanish Sign Language Recognition with Different Topology Hidden Markov Models

Natural language recognition techniques can be applied not only to speech signals, but to other signals that represent natural language units (e.g., words and sentences). This is the case of sign language recognition, which is usually employed by deaf people to communicate. The use of recognition techniques may allow this language users to communicate more independently with non-signal users. Several works have been done for different variants of sign languages, but in most cases their vocabulary is quite limited and they only recognise gestures corresponding to isolated words. In this work, we propose gesture recognisers which make use of typical Continuous Density Hidden Markov Model. They solve not only the isolated word problem, but also the recognition of basic sentences using the Spanish Sign Language with a higher vocabulary than in other approximations. Different topologies and Gaussian mixtures are studied. Results show that our proposal provides promising results that are the first step to obtain a general automatic recognition of Spanish Sign Language.

[1]  John Cocke,et al.  A Statistical Approach to Machine Translation , 1990, CL.

[2]  Kirsti Grobel,et al.  Isolated sign language recognition using hidden Markov models , 1996, 1997 IEEE International Conference on Systems, Man, and Cybernetics. Computational Cybernetics and Simulation.

[3]  Jonathan G. Fiscus,et al.  A post-processing system to yield reduced word error rates: Recognizer Output Voting Error Reduction (ROVER) , 1997, 1997 IEEE Workshop on Automatic Speech Recognition and Understanding Proceedings.

[4]  Frederick Jelinek,et al.  Statistical methods for speech recognition , 1997 .

[5]  Alex Pentland,et al.  Real-Time American Sign Language Recognition Using Desk and Wearable Computer Based Video , 1998, IEEE Trans. Pattern Anal. Mach. Intell..

[6]  Andreas Stolcke,et al.  Finding consensus among words: lattice-based word error minimization , 1999, EUROSPEECH.

[7]  Stanley Peters,et al.  Collaborative activities and multi-tasking in dialogue systems , 2002 .

[8]  Wen Gao,et al.  A Chinese sign language recognition system based on SOFM/SRN/HMM , 2004, Pattern Recognit..

[9]  Hermann Ney,et al.  Bootstrap estimates for confidence intervals in ASR performance evaluation , 2004, 2004 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[10]  Janyce Wiebe,et al.  Recognizing Contextual Polarity in Phrase-Level Sentiment Analysis , 2005, HLT.

[11]  Tara N. Sainath,et al.  Deep Neural Networks for Acoustic Modeling in Speech Recognition: The Shared Views of Four Research Groups , 2012, IEEE Signal Processing Magazine.

[12]  Fu-Hua Chou,et al.  An encoding and identification approach for the static sign language recognition , 2012, 2012 IEEE/ASME International Conference on Advanced Intelligent Mechatronics (AIM).

[13]  Tarik Arici,et al.  Gesture Recognition using Skeleton Data with Weighted Dynamic Time Warping , 2013, VISAPP.

[14]  Zuzanna Parcheta Estudio para la selección de descriptores de gestos a partir de la biblioteca "Leap Motion" , 2015 .

[15]  Juan David Guerrero-Balaguera,et al.  FPGA-based translation system from colombian sign language to text , 2015 .

[16]  Carlos D. Martínez-Hinarejos,et al.  Sign Language Gesture Recognition Using HMM , 2017, IbPRIA.