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Facial Expression Recognition Based on Weighted All Parts Accumulation and Optimal Expression-Specific Parts Accumulation

机译:基于加权所有部位累积和最优表情特定部位累积的面部表情识别

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Abstract-With the increasing applications of human computer interactive systems, recognizing accurate and application oriented human expressions is becoming a challenging topic. The face is highly attractive biometric trait for expression recognition because of its physiological structure, its robustness and location. In this paper we proposed modified subspace projection method that is an extension of our previous work [11]. Our previous work was FER analysis on full face and half faces by using principal component analysis (PCA) for feature extraction. This is obviously an extension of existing PCA algorithm. In this paper PCA is applied on facial parts like left eye, right eye, nose and mouth for feature extraction. A Flow chart for the whole system is depicted in section 3. The objective of this research is to develop a more effective approach to distinguish between seven prototypic facial expressions, such as neutral, smile, anger, surprise, fear, disgust, and sadness.These techniques clearly outperform our previous paper[11]. The whole procedure is applied on Cohnkanade FEA dataset and we achieved higher accuracy than our previous method.
机译:摘要-随着人机交互系统的日益广泛的应用,识别准确的和面向应用的人文表达正成为一个具有挑战性的话题。面部由于其生理结构,坚固性和位置而成为表情识别的极具吸引力的生物特征。在本文中,我们提出了改进的子空间投影方法,该方法是我们先前工作的扩展[11]。我们之前的工作是通过使用主成分分析(PCA)进行特征提取来对全脸和半脸进行FER分析。显然,这是对现有PCA算法的扩展。本文将PCA应用于左眼,右眼,鼻子和嘴等面部部位以进行特征提取。整个系统的流程图在第3节中进行了描述。本研究的目的是开发一种更有效的方法来区分七个原型面部表情,例如中性,微笑,愤怒,惊讶,恐惧,厌恶和悲伤。这些技术明显优于我们先前的论文[11]。整个过程应用于Cohnkanade FEA数据集,与以前的方法相比,我们获得了更高的准确性。

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