Enhanced Face Recognition Using Adaptive Local Tri Weber Pattern with Improved Deep Learning Architecture

R. Jatain, Manisha Jailia
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引用次数: 1

Abstract

Effective face recognition is accomplished using the extraction of features and classification. Though there are multiple techniques for face image recognition, full face recognition in real-time is quite difficult. One of the emerging and promising methods to address this challenge in face recognition is deep learning networks. The inevitable network tool associated with the face recognition method with deep learning systems is convolutional neural networks (CNNs). This research intends to develop a new method for face recognition using adaptive intelligent methods. The main phases of the proposed method are (a) data collection, (b) image pre-processing, (c) normalization, (d) pattern extraction, and (e) recognition. Initially, the images for face recognition are gathered from CPFW, Yale datasets, and the MIT-CBCL dataset. The image pre-processing is performed by the Gaussian filtering method. Further, the normalization of the image will be done, which is a process that alters the range of pixel intensities and can handle the poor contrast due to glare. Then a new descriptor called adaptive local tri Weber pattern (ALTrWP) acts as a pattern extractor. In the recognition phase, the VGG16 architecture with new chick updated-chicken swarm optimization (NSU-CSO) is used. As the modification, VGG16 architecture will be enhanced by this optimization technique. The performance of the developed method is analyzed on two standards face database. Experimental results are compared with different machine learning approaches concerned with noteworthy measures, which demonstrate the efficiency of the considered classifier.
基于改进深度学习架构的自适应局部Tri Weber模式增强人脸识别
有效的人脸识别是通过特征提取和分类来实现的。虽然人脸图像识别技术多种多样,但实时全人脸识别的难度很大。解决人脸识别中这一挑战的新兴和有前途的方法之一是深度学习网络。卷积神经网络(cnn)是与深度学习系统的人脸识别方法相关联的不可避免的网络工具。本研究旨在开发一种基于自适应智能方法的人脸识别新方法。提出的方法的主要阶段是(a)数据收集,(b)图像预处理,(c)归一化,(d)模式提取和(e)识别。最初,用于人脸识别的图像是从CPFW、耶鲁大学数据集和麻省理工学院- cbcl数据集收集的。图像预处理采用高斯滤波方法。此外,将完成图像的归一化,这是一个改变像素强度范围的过程,可以处理由于眩光造成的低对比度。然后,一种新的描述符称为自适应局部三韦伯模式(ALTrWP)作为模式提取器。在识别阶段,采用了带有新小鸡更新-鸡群优化(NSU-CSO)的VGG16结构。随着修改的进行,VGG16的架构将通过这种优化技术得到增强。在两个标准人脸数据库上分析了该方法的性能。实验结果与不同的机器学习方法进行了比较,这些方法涉及值得注意的度量,证明了所考虑的分类器的效率。
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