Gubbala Kumari, Kumar M Naveen, Sowjanya A Mary
Department of CSE, CMR Engineering College, Hyderabad, Telangana, India.
Department of CS&SE, Andhra University College of Engineering (A), Visakhapatnam, Andhra Pradesh 530003, India.
MethodsX. 2023 Oct 14;11:102422. doi: 10.1016/j.mex.2023.102422. eCollection 2023 Dec.
Posting of visual data in the social network has now become a common trend. Mainly, users are posting selfies or facial images over the social media that depict various moods at different instances. This has attracted the attention of researchers to come up with facial expression mining from social media images. Aim of the present work is to improve the performance of emotion analysis in a more efficient way in terms of accuracy and reliability. Developing new strategies for carrying out emotion analysis on posts containing images in social media. In this work, a novel model has been presented that focuses on transformed features for the purpose. Six distinct sentimental emotion classes (labeled 0 through 5) are considered in this work. They are 0: Sad, 1: Fear, 2: Awful, 3: Happy, 4: Surprised, 5: Satisfied. This model consists of three major stages: Feature extraction, Feature selection, and Class labeling.•This work incorporates the use of 2D Ortho-normal Stockwell Transformation (DOST) method is used for feature extraction of facial images.•Following the feature extraction model, feature selection is implemented through 'bi-variate t-test'.•Finally, these selected features are subjected to a AdaBoost based Random Forest classifier for Emotion Classification(ARFEC) for the purpose of class labeling towards different classes of expression. The Flickr8k, CK+ and FER2013 image databases are utilized for validating the efficiency of the developed ARFEC model. Analysis of results shows the effectiveness of ARFEC model with overall rates of accuracy of 89.5 %, 92.5 % and 89.5 % respectively for the databases taken. Performance of ARFEC model when compared with other existing methods such as Support Vector Machine and K-Nearest Neighbors yielded better results in terms of overall rate of accuracy.
在社交网络上发布视觉数据如今已成为一种普遍趋势。主要是用户在社交媒体上发布自拍或面部图像,这些图像描绘了不同时刻的各种情绪。这吸引了研究人员从社交媒体图像中进行面部表情挖掘。当前工作的目的是以更高的准确性和可靠性更高效地提高情感分析的性能。为对社交媒体中包含图像的帖子进行情感分析开发新策略。在这项工作中,提出了一种新颖的模型,该模型专注于为此目的进行变换后的特征。这项工作考虑了六个不同的情感类别(标记为0到5)。它们是0:悲伤,1:恐惧,2:糟糕,3:快乐,4:惊讶,5:满意。该模型由三个主要阶段组成:特征提取、特征选择和类别标注。•这项工作采用二维正交归一化斯托克韦尔变换(DOST)方法进行面部图像的特征提取。•在特征提取模型之后,通过“双变量t检验”实现特征选择。•最后,将这些选定的特征用于基于AdaBoost的随机森林情感分类器(ARFEC),以针对不同类别的表情进行类别标注。利用Flickr8k、CK+和FER2013图像数据库来验证所开发的ARFEC模型的效率。结果分析表明,对于所采用的数据库,ARFEC模型分别具有89.5%、92.5%和89.5%的总体准确率,显示出其有效性。与支持向量机和K近邻等其他现有方法相比,ARFEC模型在总体准确率方面产生了更好的结果。