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Evaluation of Manual and Non-manual Components for Sign Language Recognition

机译:评估手动和非手动组件进行手语识别

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The motivation behind this work lies in the need to differentiate between similar signs that differ in non-manual components present in any sign. To this end. we recorded full sentences signed by five native signers and extracted 5200 isolated sign samples of twenty frequently used signs in Kazakh-Russian Sign Language (K-RSL), which have similar manual components but differ in non-manual components (i.e. facial expressions, eyebrow height, mouth, and head orientation). We conducted a series of evaluations in order to investigate whether non-manual components would improve sign's recognition accuracy. Among standard machine learning approaches, Logistic Regression produced the best results. 78.2% of accuracy for dataset with 20 signs and 77.9% of accuracy for dataset with 2 classes (statement vs question).
机译:这项工作背后的动机在于需要区分在任何符号中存在的非手动组件不同的类似标志之间。 为此。 我们录制了五个本机签名者签名的完整句子,并在哈萨克语 - 俄语手语(K-RSL)中提取了二十次常用标志的5200个孤立的标志样本,具有类似的手动组件,但在非手动组件(即面部表情,眉毛 身高,嘴巴和头部方向)。 我们进行了一系列评估,以调查非手动组件是否会提高迹象的识别准确性。 在标准机器学习方法中,Logistic回归产生了最佳结果。 78.2%的数据集准确性为20个标志,数据集的准确性为77.9%,具有2个类(语句与问题)。

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