基于局部二值模式和灰度共现矩阵混合特征提取的口腔表情识别

R. A. Pramunendar, Dwi Puji Prabowo, Y. Sari
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摘要

一些学者努力在模式识别的基础上识别面部情绪。一般来说,这种识别利用了所有的面部特征。然而,这项研究仅限于识别单个面部区域的面部情绪。在这项研究中,嘴唇是可以显示一个人的表情的面部特征之一。采用局部二值模式特征提取(LBP)和灰度共生矩阵(GLCM)相结合的方法和多类支持向量机分类方法对人脸图像进行特征提取。这个概念从图像分割开始,以创建一个嘴巴的图像。实验还进行了各种测试,这些实验的结果表明,识别性能高达95%。这个结果是通过对10% ~ 40%的数据进行评估的实验得出的。这些研究结果可用于在线学习媒体的表情识别,以直接监测受众的状态。
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MIXTURE FEATURE EXTRACTION BASED ON LOCAL BINARY PATTERN AND GREY-LEVEL CO-OCCURRENCE MATRIX TECHNIQUES FOR MOUTH EXPRESSION RECOGNITION
Some academics struggle to recognize facial emotions based on pattern recognition. In general, this recognition utilizes all facial features. However, this study was limited to identifying facial emotions in a single facial region. In this study, lips, one of the facial features that can reveal a person's expression, are utilized. Using a combination of local binary pattern feature extraction (LBP) and grey level co-occurrence matrix (GLCM) methods and a multiclass support vector machine classification approach for feature extraction in facial images. The concept begins with image segmentation to create an image of a mouth. Experiments were also conducted for various tests, and the outcomes of these experiments revealed a recognition performance of up to 95%. This result was obtained through experiments in which 10% to 40% of the data were evaluated. These findings are beneficial and can be applied to expression recognition in online learning media to monitor the audience's condition directly.
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