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Advances in phonetics-based sub-unit modeling for transcription alignment and sign language recognition

机译:基于语音学的子单元建模用于转录比对和手语识别的进展

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摘要

We explore novel directions for incorporating phonetic transcriptions into sub-unit based statistical models for sign language recognition. First, we employ a new symbolic processing approach for converting sign language annotations, based on HamNoSys symbols, into structured sequences of labels according to the Posture-Detention-Transition-Steady Shift phonetic model. Next, we exploit these labels, and their correspondence with visual features to construct phonetics-based statistical sub-unit models. We also align these sequences, via the statistical sub-unit construction and decoding, to the visual data to extract time boundary information that they would lack otherwise. The resulting phonetic sub-units offer new perspectives for sign language analysis, phonetic modeling, and automatic recognition. We evaluate this approach via sign language recognition experiments on an extended Lemmas Corpus of Greek Sign Language, which results not only in improved performance compared to pure data-driven approaches, but also in meaningful phonetic sub-unit models that can be further exploited in interdisciplinary sign language analysis. © 2011 IEEE.
机译:我们探索将语音转录纳入基于子单元的手语识别统计模型的新颖方向。首先,我们采用一种新的符号处理方法,根据Posture-Detention-Transition-Steady Shift语音模型,将基于HamNoSys符号的手语注释转换为结构化的标签序列。接下来,我们利用这些标签及其与视觉特征的对应关系来构建基于语音的统计子单元模型。我们还通过统计子单元的构造和解码,将这些序列与视觉数据进行比对,以提取否则会缺少的时间边界信息。由此产生的语音子单元为手语分析,语音建模和自动识别提供了新的视角。我们通过在希腊手语的扩展Lemmas语料库上通过手语识别实验评估了这种方法,与纯数据驱动的方法相比,这种方法不仅可以提高性能,而且还可以在跨学科中进一步利用有意义的语音子单元模型手语分析。 ©2011 IEEE。

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