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Fuzzy linear projection on combined multi-feature characterisation vectors for facial expression recognition enhancement

机译:组合多特征特征向量上的模糊线性投影,用于增强面部表情识别

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摘要

Facial expression recognition became an important research subject for its diverse applications in human machine interaction. However, many challenges still to be overcome. By the presented work in this paper, we try to provide a new facial expression recognition technique based on combined vectors of multi-feature characterisation of the face. Thus, the face within an image is firstly localised using a simplified method, then it will be characterised in three different ways; by obtaining its Zernike moments feature vectors, known to compact geometric characteristics of the image, then by compiling AR model, supposed to be a representation of its spectral source model and at last, a statistical distribution analysis of the luminance information is performed through the LBP method. Obtained feature vectors were used to train neural network classifiers (NNC) in different manner. To demonstrate the effectiveness of the proposed technique, we record and compare recognition rates for NNC trained with each type of feature vector firstly, then for NNC trained with directly combined feature vectors and finally for NNC trained with composite feature vectors which underwent a fuzzy linear projection operation. Experiments were performed on the JAFFE and Yale database. Recorded results along with comparisons to other methods have affirmed the potency of the proposed approach attaining promising results compared to those reported in the literature.
机译:面部表情识别由于其在人机交互中的多种应用而成为重要的研究课题。但是,许多挑战仍然有待克服。通过本文提出的工作,我们尝试提供一种基于面部多特征表征的组合向量的新面部表情识别技术。因此,首先使用简化方法对图像中的人脸进行定位,然后将其以三种不同的方式进行特征化:通过获得已知的可压缩图像几何特征的Zernike矩特征向量,然后编译被认为是其光谱源模型表示形式的AR模型,最后,通过LBP对亮度信息进行统计分布分析方法。获得的特征向量用于以不同的方式训练神经网络分类器(NNC)。为了证明所提出技术的有效性,我们首先记录和比较使用每种特征向量训练的NNC,然后使用直接组合特征向量训练的NNC,最后使用经过模糊线性投影的复合特征向量训练的NNC的识别率。操作。在JAFFE和Yale数据库上进行了实验。记录的结果以及与其他方法的比较已经证实,与文献报道的方法相比,所提出方法的潜力很可观。

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