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首页> 外文期刊>Journal of Signal Processing Systems >Sign Language Phoneme Transcription with Rule-based Hand Trajectory Segmentation
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Sign Language Phoneme Transcription with Rule-based Hand Trajectory Segmentation

机译:基于规则的手轨迹分割的手语音素转录

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摘要

A common approach to extract phonemes of sign language is to use an unsupervised clustering algorithm to group the sign segments. However, simple clustering algorithms based on distance measures usually do not work well on temporal data and require complex algorithms. In this paper, we present a simple and effective approach to extract phonemes from American sign language sentences. We first apply a rule-based segmentation algorithm to segment the hand motion trajectories of signed sentences. We then extract feature descriptors based on principal component analysis to represent the segments efficiently. The segments are clustered by k-means using these high level features to derive phonemes. 25 different continuously signed sentences from a deaf signer were used to perform the analysis. After phoneme transcription, we trained Hidden Markov Models to recognize the sequence of phonemes in the sentences. Overall, our automatic approach yielded 165 segments, and 58 phonemes were obtained based on these segments. The average number of recognition errors was 18.8 (11.4%). In comparison, completely manual trajectory segmentation and phoneme transcription, involving considerable labor yielded 173 segments, 57 phonemes, and the average number of recognition errors was 33.8 (19.5%).
机译:提取手语音素的常用方法是使用无监督聚类算法对手语段进行分组。但是,基于距离测度的简单聚类算法通常无法在时间数据上很好地工作,并且需要复杂的算法。在本文中,我们提出了一种简单有效的方法来从美国手语句子中提取音素。我们首先应用基于规则的分割算法来分割带符号句子的手部运动轨迹。然后,我们基于主成分分析提取特征描述符,以高效地表示细分。使用这些高级功能通过k均值对片段进行聚类,以得出音素。来自聋人的25个连续签名的句子被用来进行分析。音素转录后,我们训练了隐马尔可夫模型以识别句子中的音素序列。总体而言,我们的自动方法产生了165个音段,并且基于这些音段获得了58个音素。识别错误的平均数为18.8(11.4%)。相比之下,完全手动的轨迹分段和音素转录(涉及大量劳动)产生了173个片段,57个音素,平均识别错误数为33.8(19.5%)。

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