Publication | Open Access
Mexican Sign Language Recognition Using Jacobi-Fourier Moments
16
Citations
7
References
2015
Year
Sign LanguageSpeech RecognitionComputer VisionImage AnalysisArtificial Neural NetworksPattern RecognitionStatic SignsBiometricsEngineeringPattern Recognition ApplicationMexican Sign LanguageSpeech ProcessingStatistical Pattern RecognitionLanguage StudiesAmerican Sign Language LinguisticsCharacter RecognitionGesture RecognitionAmerican Sign Language
The present work introduces a system for recognizing static signs in Mexican Sign Language (MSL) using Jacobi-Fourier Moments (JFMs) and Artificial Neural Networks (ANN). The original color images of static signs are cropped, segmented and converted to grayscale. Then to reduce computational costs 64 JFMs were calculated to represent each image. The JFMs are sorted to select a subset that improves recognition according to a metric proposed by us based on a ratio between dispersion measures. Using WEKA software to test a Multilayer-Perceptron with this subset of JFMs reached 95% of recognition rate.
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