Publication | Closed Access
Real-time American sign language recognition using desk and wearable computer based video
1.3K
Citations
17
References
1998
Year
American Deaf CultureEngineeringBiometricsWearable TechnologyWearable ComputerSpeech RecognitionPercent Word AccuracyPattern RecognitionLanguage StudiesGesture ProcessingMultimodal Human Computer InterfaceAmerican Sign LanguageMachine VisionAssistive TechnologyPercent AccuracyComputer ScienceComputer VisionGesture Recognition40-Word LexiconSign LanguageEye TrackingSpeech ProcessingSpeech InputAmerican Sign Language LinguisticsLinguistics
We present two real-time hidden Markov model-based systems for recognizing sentence-level continuous American sign language (ASL) using a single camera to track the user's unadorned hands. The first system observes the user from a desk mounted camera and achieves 92 percent word accuracy. The second system mounts the camera in a cap worn by the user and achieves 98 percent accuracy (97 percent with an unrestricted grammar). Both experiments use a 40-word lexicon.
| Year | Citations | |
|---|---|---|
Page 1
Page 1