Sign Language Recognition, Generation, and Translation: An Interdisciplinary Perspective

22 Aug 2019Danielle BraggOscar KollerMary BellardLarwan BerkePatrick BoudrealtAnnelies BraffortNaomi CaselliMatt HuenerfauthHernisa KacorriTessa VerhoefChristian VoglerMeredith Ringel Morris

Developing successful sign language recognition, generation, and translation systems requires expertise in a wide range of fields, including computer vision, computer graphics, natural language processing, human-computer interaction, linguistics, and Deaf culture. Despite the need for deep interdisciplinary knowledge, existing research occurs in separate disciplinary silos, and tackles separate portions of the sign language processing pipeline... (read more)

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