人工神经网络算法在面部表情识别中的性能比较

Amira Elsir Tayfour, Al-Soswa Mohammed, M. E. Eldow
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引用次数: 0

摘要

本研究提出了人脸表情识别的方法。本文的目标是提出一种结合降维的面向纹理的方法,可用于训练单层神经网络(SLN)、反向传播算法(BPA)和小脑模型发音控制器(CMAC)来识别面部表情。所提出的方法被称为智能方法,因为它们可以解释面部表情的变化,因此对未经训练的面部表情表现得更好。传统的方法有局限性,因为面部表情必须遵循一定的准则。利用Gabor小波在不同角度提取面部表情可能存在的纹理,达到表情检测的精度。利用Fisher线性判别函数进一步降低提取的纹理特征的高维数,提高方法的精度。为了训练所提出的算法,使用Fisher的线性判别函数将高维特征向量转换为二维向量。愤怒、厌恶、快乐、悲伤、惊讶和恐惧是一些被使用的面部表情。在性能方面对提出的算法进行了比较。
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A Comparison of the Performance of Artificial Neural Network Algorithms in Facial Expression Recognition
The methods for identifying facial expressions are presented in this research. The goal of this paper is to present a texture-oriented method combined with dimensional reduction that can be used to train the Single-Layer Neural Network (SLN), Back Propagation Algorithm (BPA), and Cerebellar Model Articulation Controller (CMAC) for identifying facial expressions. The proposed methods are known as intelligent methods because they can account for variations in facial expressions and thus perform better for untrained facial expressions. Conventional methods have limitations in that face expressions must adhere to certain guidelines. Gabor wavelet is used in different angles to extract possible textures of the facial expression to achieve expression detection accuracy. The higher dimensions of the extracted texture features are further reduced by using Fisher's linear discriminant function to improve the proposed method's accuracy. For training the proposed algorithms, Fisher's linear discriminant function is employed to turn a higher-dimensional feature vector into a two-dimensional vector. Angry, disgust, happiness, sadness, surprise, and fear are some of the facial emotions that are used. The proposed algorithms are compared in terms of performance.
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