1. What are the contributions in "Finding recurrent patterns from continuous sign language sentences for automated extraction of signs" ?
The authors present a probabilistic framework to automatically learn models of recurring signs from multiple sign language video sequences containing the vocabulary of interest.. The authors extract the parts of the signs that are present in most occurrences of the sign in context and are robust to the variations produced by adjacent signs.. Given these time series trajectories, the authors extract signemes from multiple sentences concurrently using iterated conditional modes ( ICM ).. The authors show results by learning single signs from a collection of sentences with one common pervading sign, multiple signs from a collection of sentences with more than one common sign, and single signs from a mixed collection of sentences.. The extracted signemes demonstrate that their approach is robust to some extent to the variations produced within a sign due to different contexts.. The authors also show results whereby these learned sign models are used for spotting signs in test sequences.
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2. What future works have the authors mentioned in the paper "Finding recurrent patterns from continuous sign language sentences for automated extraction of signs" ?
Additionally, the authors plan to extend their work to address the challenge of handling the large variations encountered when automatically recognizing signemes across different signers.. The authors plan to work on a variation of dynamic time warping that is robust to amplitude differences between various instances of signs.
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