RWTH-PHOENIX-Weather: A Large Vocabulary Sign Language Recognition and Translation Corpus

LREC 2012 Jens ForsterChristoph SchmidtThomas HoyouxOscar KollerUwe ZelleJustus PiaterHermann Ney

This paper introduces the RWTH-PHOENIX-Weather corpus, a video-based, large vocabulary corpus of German Sign Language suitable for statistical sign language recognition and translation. In contrastto most available sign language data collections, the RWTH-PHOENIX-Weather corpus has not been recorded for linguistic research but for the use in statistical pattern recognition... (read more)

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