Algorithmic Study on Facial Emotion Recognition model with Optimal Feature Selection via Firefly Plus Jaya Algorithm

B. Devi, M. S. J. Jain Preetha
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引用次数: 2

Abstract

Facial emotions are significant constraints that assist us to identify the intents of others. Generally, inhabitants understand the emotional condition of other people, like anger, sadness, and joy, using vocal tone and facial expressions. Here, a novel Facial Emotion Recognition system (FER) is developed that includes four major processes: (a) Face detection (b) Feature extraction (c) Optimal feature selection and (d) Classification. The input facial images are provided as input to a face detection model referred to as the viola-jones method. Then, from the detected facial images, the Local Binary Pattern (LBP), Discrete Wavelet Transform (DWT), and Gray Level Co-occurrence Matrix (GLCM) features are extracted. The length of the features is large, so there is a requirement to choose the optimal features from the image. After selecting the optimal features, it is subjected to the classification process via Neural Network (NN). As a novelty, the optimal feature selection and the weight optimization of NN are carried out via a new hybrid algorithm called Mean Fitness Oriented JA+FF position update (MF-JFF). Later, an algorithmic analysis is performed for validating the performance of the presented model. From the analysis, the accuracy obtained for the values γ attained at 0.6 was 2.2% better than the values attained when γ = 0.2, 0.4, 0.8, and 1 respectively.
基于Firefly + Jaya算法的最优特征选择面部情绪识别模型算法研究
面部情绪是帮助我们识别他人意图的重要约束。一般来说,居民通过声调和面部表情来理解他人的情绪状况,比如愤怒、悲伤和快乐。本文开发了一种新的面部情感识别系统(FER),该系统包括四个主要过程:(a)人脸检测(b)特征提取(c)最优特征选择和(d)分类。输入的面部图像作为输入提供给称为viola-jones方法的面部检测模型。然后,从检测到的人脸图像中提取局部二值模式(LBP)、离散小波变换(DWT)和灰度共生矩阵(GLCM)特征;特征长度较大,需要从图像中选择最优特征。选择最优特征后,通过神经网络进行分类处理。作为一种新颖的方法,神经网络的最优特征选择和权值优化是通过一种新的混合算法进行的,称为Mean Fitness Oriented JA+FF position update (MF-JFF)。随后,执行算法分析以验证所提出模型的性能。从分析中可以看出,在γ = 0.6时获得的值比γ = 0.2、0.4、0.8和1时获得的值的精度高2.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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