利用支持向量机与人工神经网络进行面部微表情识别,提高召回率

S. Soharika, N. Bhavani
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引用次数: 1

摘要

目的:创建在现代世界至关重要的面部识别系统是本研究的目的。本研究采用新颖的支持向量机和人工神经网络在Python语言中构建快速人脸识别技术。在本文中,我们比较了新型支持向量机和人工神经网络在人脸识别中的性能。材料和方法:详细的研究建议的算法进行了回顾。测试是在一个公开的人脸数据库中进行的。每个算法都使用十张不同的照片进行测试,每张照片都有不同的面部表情和灯光。在SPSS研究中,采用了近10个样本来评估、比较和理解所提出算法的准确性。对于精度预测,在SPSS软件中使用80%的G功率。考虑的参数为CI和alpha,确定其为0.003 (p < 0.05)。支持向量机算法组1取10个样本,人工神经网络算法组2取10个样本比较面部表情的召回率。结果:给出并检验了几种特征提取方法和分类器相结合的结果。结论:情绪识别是提高当前基于图像的识别效率的一种很有前途的技术。在这个研究项目中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identify Facial Micro Expression Using Support Vector Machine Compared with Artificial Neural Network to Improve Recall Parameter
Aim: The creation of facial recognition systems, which are crucial in the modern world, is the aim of this research. The Novel Support Vector Machine and Artificial Neural Network are used in this study to build a rapid facial recognition technique in Python. In this research article, we compare the performance of Novel Support Vector Machine and Artificial Neural Network in facial recognition. Materials and Methods: The detailed studies of suggested algorithms are reviewed. The testing was carried out using a publicly accessible face database. Each algorithm is put to the test using ten different photos, each with a varied face expression and lighting. For the SPSS study, nearly 10 samples were taken to evaluate, compare, and understand the accuracy of proposed algorithms. For accuracy prediction, a G power of 80% is used in the SPSS software. The parameters considered are CI and alpha, which were determined as 0.003 (p < 0.05). For SVM group 1, 10 samples are taken and for Artificial Neural Network algorithm group 2, 10 samples are taken to compare the Recall for facial expressions. Result: The results of combining several feature extraction methods and classifiers were given and examined. SVM was shown to have the best accuracy, with a score of 97.01 % Conclusion: Emotion recognition is a promising technique for improving the efficiency of current image-based recognition techniques. In this research project.
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