Publication | Open Access
A convolutional neural network to classify American Sign Language fingerspelling from depth and colour images
114
Citations
19
References
2017
Year
Convolutional Neural NetworkEngineeringBiometricsImage ClassificationImage AnalysisPattern RecognitionLanguage StudiesCharacter RecognitionGesture ProcessingAbstract Sign LanguageAmerican Sign LanguageCognitive ScienceMachine VisionDeep LearningGesture RecognitionComputer VisionSign LanguageDeep Neural NetworksColour ImagesAmerican Sign Language Linguistics
Abstract Sign language is used by approximately 70 million ( http://wfdeaf.org/human‐rights/crpd/sign‐language ) people throughout the world, and an automatic tool for interpreting it could make a major impact on communication between those who use it and those who may not understand it. However, computer interpretation of sign language is very difficult given the variability in size, shape, and position of the fingers or hands in an image. Hence, this paper explores the applicability of deep learning for interpreting sign language and develops a convolutional neural network aimed at classifying fingerspelling images using both image intensity and depth data. The developed convolutional network is evaluated by applying it to the problem of fingerspelling recognition for American Sign Language. The evaluation shows that the developed convolutional network performs better than previous studies and has precision of 82% and recall of 80%. Analysis of the confusion matrix from the evaluation reveals the underlying difficulties of classifying some particular signs, which are discussed in the paper.
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