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Robust sign language recognition by combining manual and non-manual features based on conditional random field and support vector machine

机译:通过基于条件随机字段和支持向量机的手动和非手动功能组合来实现可靠的手语识别

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摘要

The sign language is composed of two categories of signals: manual signals such as signs and fingerspellings and non-manual ones such as body gestures and facial expressions. This paper proposes a new method for recognizing manual signals and facial expressions as non-manual signals. The proposed method involves the following three steps: First, a hierarchical conditional random field is used to detect candidate segments of manual signals. Second, the BoostMap embedding method is used to verify hand shapes of segmented signs and to recognize fingerspellings. Finally, the support vector machine is used to recognize facial expressions as non-manual signals. This final step is taken when there is some ambiguity in the previous two steps. The experimental results indicate that the proposed method can accurately recognize the sign language at an 84% rate based on utterance data.
机译:手语由两类信号组成:手动信号(例如符号和手指拼写)和非手动信号(例如身体手势和面部表情)。本文提出了一种识别手动信号和面部表情为非手动信号的新方法。所提出的方法包括以下三个步骤:首先,使用分层条件随机字段来检测手动信号的候选段。其次,BoostMap嵌入方法用于验证分割标志的手形并识别手指的拼写。最后,支持向量机用于将面部表情识别为非手动信号。如果前两个步骤中有一些歧义,则采取最后一步。实验结果表明,基于语音数据,该方法可以准确识别手语,识别率为84%。

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