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Hybrid meta-heuristic algorithm based deep neural network for face recognition

机译:基于混合元启发式算法的面部识别深神经网络

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Face recognition has been active research in the security domain. Human face recognition gains importance for developing a secured environment for the organization and also enhances the usage of artificial intelligence for security. Face recognition has been studied over the years for accurate recognition of complete face images. However, in the real case, the presence of occlusion and noise in the image significantly affects the performance of the recognition. Even though a lot of research has been carried out in handling the occluded and noisy image, more refinement is required to achieve high accuracy. This paper proposes a simple and efficient face recognition system with occlusion and noisy faces using the deep learning concept, as it has the advantage of handling all of it. The developed model undergoes four main steps like (a) preprocessing, (b) cascaded feature extraction, (c) optimal feature selection, and (d) recognition. Initially, the preprocessing of the face image is focused in terms of face detection by Viola-Jones algorithm. Further, a set of features termed as Local Diagonal Extrema Number Pattern (LDENP), Gradient-based directional features, and Gradient-based wavelet features are extracted for the cascaded feature extraction. As the collection of features is in a cascaded manner, it leads to providing irrelevant information of features. Hence, there is a need for optimal feature selection. The hybrid meta-heuristic concept, namely Multi-Verse with Colliding Bodies Optimization (MV-CBO), is developed with the integration of Colliding Bodies Optimization (CBO) and Multi-Verse Optimizer (MVO), and it is used for performing the optimal feature selection. Further, the optimally selected features are subjected to the optimized Deep Neural Network (DNN) for recognizing the faces, in which the proposed MV-CBO is used for optimizing the activation functions (sigmoid, tanh, Relu, ArcTan, and RRelu). The experimental findings on diverse datasets with occlusion and noises prove that the extensive experiments on several benchmark databases prove the ability of the proposed model over the existing face recognition approaches.
机译:面部识别在安全域中一直在积极研究。人类识别对为本组织开发安全环境的重要性,并提高了人工智能为安全的使用。多年来研究了面部识别,以准确识别完整的面部图像。然而,在实际情况下,图像中的遮挡和噪声的存在显着影响识别的性能。尽管在处理遮挡和嘈杂的图像时已经进行了很多研究,但需要更多的细化来实现高精度。本文提出了一种简单高效的面部识别系统,使用深​​入学习概念,具有遮挡和嘈杂的面孔,因为它具有处理所有的优势。开发模型经历四个主要步骤(a)预处理,(b)级联特征提取,(c)最优特征选择,(d)识别。最初,面部图像的预处理在通过中提琴算法的面部检测方面聚焦。此外,为级联特征提取提取一组称为本地对角线数量模式(LDEnP),基于梯度的方向特征和基于梯度的小波特征的特征。由于特征的集合以级联方式,它导致提供特征的无关信息。因此,需要最佳特征选择。混合元启发式概念,即具有碰撞体优化(MV-CBO)的多节经文,通过集成碰撞体优化(CBO)和多韵优化器(MVO),它用于执行最佳状态功能选择。此外,优化所选择的特征经受优化的深神经网络(DNN),用于识别面部的面部,其中所提出的MV-CBO用于优化激活功能(Sigmoid,Tanh,Relu,Arctan和Rrelu)。具有遮挡和噪音不同数据集的实验结果证明了几个基准数据库的广泛实验证明了所提出的模型对现有面部识别方法的能力。

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