Sarhan Shahenda, Nasr Aida A, Shams Mahmoud Y
Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, Saudi Arabia.
Faculty of Computers and Information Sciences, Mansoura University, Mansoura, Egypt.
Comput Intell Neurosci. 2020 Sep 24;2020:8821868. doi: 10.1155/2020/8821868. eCollection 2020.
Multipose face recognition system is one of the recent challenges faced by the researchers interested in security applications. Different researches have been introduced discussing the accuracy improvement of multipose face recognition through enhancing the face detector as Viola-Jones, Real Adaboost, and Cascade Object Detector while others concentrated on the recognition systems as support vector machine and deep convolution neural networks. In this paper, a combined adaptive deep learning vector quantization (CADLVQ) classifier is proposed. The proposed classifier has boosted the weakness of the adaptive deep learning vector quantization classifiers through using the majority voting algorithm with the speeded up robust feature extractor. Experimental results indicate that, the proposed classifier provided promising results in terms of sensitivity, specificity, precision, and accuracy compared to recent approaches in deep learning, statistical, and classical neural networks. Finally, the comparison is empirically performed using confusion matrix to ensure the reliability and robustness of the proposed system compared to the state-of art.
多姿态人脸识别系统是对安全应用感兴趣的研究人员最近面临的挑战之一。已经开展了不同的研究,讨论通过增强诸如Viola-Jones、Real Adaboost和级联目标检测器等面部检测器来提高多姿态人脸识别的准确性,而其他研究则集中在诸如支持向量机和深度卷积神经网络等识别系统上。本文提出了一种组合自适应深度学习矢量量化(CADLVQ)分类器。所提出的分类器通过将多数投票算法与加速鲁棒特征提取器相结合,克服了自适应深度学习矢量量化分类器的弱点。实验结果表明,与深度学习、统计和经典神经网络中的最新方法相比,所提出的分类器在灵敏度、特异性、精度和准确性方面都取得了不错的结果。最后,使用混淆矩阵进行实证比较,以确保所提出的系统与现有技术相比的可靠性和鲁棒性。