Facial emotion recognition using hybrid features-novel leaky rectified triangle linear unit activation function based deep convolutional neural network

Suputri Devi D. Anjani, E. Suneetha
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Abstract

Facial Expression Recognition (FER) is an important topic that is used in many areas. FER categorizes facial expressions according to human emotions. Most networks are designed for facial emotion recognition but still have some problems, such as performance degradation and the lowest classification accuracy. To achieve greater classification accuracy, this paper proposes a new Leaky Rectified Triangle Linear Unit (LRTLU) activation function based on the Deep Convolutional Neural Network (DCNN). The input images are pre-processed using the new Adaptive Bilateral Filter Contourlet Transform (ABFCT) filtering algorithm. The face is then detected in the filtered image using the Chehra face detector. From the detected face image, facial landmarks are extracted using a cascading regression tree, and important features are extracted based on the detected landmarks. The extracted feature set is then passed as input to the Leaky Rectified Triangle Linear Unit Activation Function Based Deep Convolutional Neural Network (LRTLU-DCNN), which classifies the input image expressions into six emotions, such as happiness, sadness, neutrality, anger, disgust, and surprise. Experimentation of the proposed method is carried out using the Extended Cohn-Kanade (CK+) and Japanese Female Facial Expression (JAFFE) datasets. The proposed work provides a classification accuracy of 99.67347% for the CK+ dataset along with 99.65986% for the JAFFE dataset.
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基于深度卷积神经网络的混合特征-新型泄漏纠偏三角形线性单元激活函数的面部情绪识别
面部表情识别(FER)是一个应用于许多领域的重要课题。FER根据人类的情绪对面部表情进行分类。大多数网络都是为面部情绪识别而设计的,但仍然存在一些问题,如性能下降和分类精度最低。为了达到更高的分类精度,本文提出了一种基于深度卷积神经网络(DCNN)的漏整流三角形线性单元(LRTLU)激活函数。使用新的自适应双边滤波轮廓波变换(ABFCT)滤波算法对输入图像进行预处理。然后使用Chehra人脸检测器在过滤后的图像中检测人脸。从检测到的人脸图像中,使用级联回归树提取人脸标志,并基于检测到的标志提取重要特征。然后将提取的特征集作为输入传递给基于Leaky Rectified三角形线性单元激活函数的深度卷积神经网络(LRTLU-DCNN),该网络将输入的图像表情分为快乐、悲伤、中立、愤怒、厌恶和惊讶等六种情绪。使用扩展的科恩-卡纳德(CK+)和日本女性面部表情(JAFFE)数据集进行了该方法的实验。提出的工作为CK+数据集提供了99.67347%的分类精度,为JAFFE数据集提供了99.65986%的分类精度。
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