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Extraction of texture and geometrical features from informative facial regions for sign language recognition

机译:从信息丰富的面部区域提取纹理和几何特征以进行手语识别

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In general, the most common form of gestures is made up of movements of the hand and/or arm associated with facial expressions. In this, the hand is used to make different message signs, while facial movements are used to reflect the mood and emotion of the person. In this paper, some sign language gestures are recognized only with the help of associated facial expressions. Existing facial expression based sign language recognition (SLR) methods only used facial geometric features to recognize sign language gestures. However, the performance of geometric feature-based SLR methods depends on the accuracy of tracking algorithms and the number of facial landmark points. Additionally, facial textures are more informative as compared to the geometric features of a face. Inspiring from these facts, we propose to recognize sign language gestures with the help of spatio-temporal characteristics of facial texture patterns. For this, a new face model is proposed by extracting texture features only from the informative regions of a face. The proposed face model can also be employed to extract the geometrical features of a face. The features extracted from the informative regions of a face are significantly discriminative, and so the proposed face model can track/encode the facial dynamics of the associated facial expressions of a sign. Finally, a 3-state hidden conditional random field is employed to model the texture variations of facial gestures. Experimental results on RWTH-BOSTON data-set show that proposed method can achieve upto 80.06% recognition rate.
机译:通常,最常见的手势形式是与面部表情相关的手和/或手臂的运动。在这种情况下,手用于发出不同的信息标志,而面部运动则用于反映人的情绪和情感。在本文中,只有通过关联的面部表情才能识别某些手语手势。现有的基于面部表情的手语识别(SLR)方法仅使用面部几何特征来识别手语手势。但是,基于几何特征的SLR方法的性能取决于跟踪算法的准确性和面部界标点的数量。另外,与脸部的几何特征相比,脸部纹理的内容更丰富。从这些事实中得到启发,我们建议借助面部纹理图案的时空特征来识别手语手势。为此,通过仅从面部的信息区域提取纹理特征来提出新的面部模型。所提出的面部模型也可以用于提取面部的几何特征。从面部信息区域提取的特征具有明显的区别性,因此,提出的面部模型可以跟踪/编码符号相关面部表情的面部动态。最后,采用三态隐藏条件随机场对面部手势的纹理变化进行建模。在RWTH-BOSTON数据集上的实验结果表明,该方法可以达到80.06%的识别率。

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