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Optimization of face recognition algorithm based on deep learning multi feature fusion driven by big data

机译:大数据驱动的基于深度学习多特征融合的人脸识别算法优化

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Today, with the rapid development of science and technology, the era of big data has been proposed and triggered reforms in all walks of life. Face recognition is a biometric recognition method with the characteristics of non-contact, non mandatory, friendly and harmonious, which has a good application prospect in the fields of national security and social security. With the deepening of the research on face recognition, small-scale face recognition has achieved good recognition results, but in the era of big data, the existing small-scale face recognition methods have gradually failed to meet the social needs, and how to get a good face recognition effect in the era of big data has become a new research hotspot. Based on this, this paper aims to optimize the existing face recognition algorithm, study the face recognition method driven by big data, and propose a deep learning multi feature fusion face recognition algorithm driven by big data. First, for the problem that 2DPCA (Two-dimensional Principle Component Analysis) can well extract the global features of the face under large samples, but the local features of the face are difficult to process, this paper uses the LBP (Local Binary Pattern, LBP) algorithm to extract the texture features of the face, and the extracted texture features are integrated with the global features extracted by 2DPCA to multi-feature fusion, so that the fused features can take into account both global and local features, and have better recognition results. Then using the obtained fusion features as input, training in a convolutional neural network, and measuring the similarity based on the feature vectors of the sample set and the training set after the training, can realize multi-feature fusion face recognition. Through the analysis of simulation experiments, it is found that, compared with the use of global features or local features alone, the fusion features obtained by multi-feature fusion of global features extracted by 2DPCA and local features extracted by LBP algorithm have better recognition effect in the big data environment. After convolutional neural network trains and recognizes this feature, a high recognition accuracy rate is obtained, which can show that the face recognition method designed in this paper has good application potential in the era of big data. In the background of big data, the accuracy of face recognition can reach more than 90%, which can meet the needs of society well. (c) 2020 Published by Elsevier B.V.
机译:今天,随着科学技术的快速发展,大数据的时代已经提出并引发了各行各业的改革。人脸识别是一种生物识别方法,具有非接触,非强制性,友好和和谐的特点,在国家安全和社会保障领域具有良好的应用前景。随着对人脸识别的研究深化,小规模的人脸识别取得了良好的识别结果,但在大数据的时代,现有的小型面部识别方法逐渐未能达到社会需求,以及如何获得大数据时代的良好面部识别效果已成为新的研究热点。基于此,本文旨在优化现有的人脸识别算法,研究大数据驱动的面部识别方法,并提出了由大数据驱动的深度学习多特征融合面识别算法。首先,对于2DPCA(二维原理分析)可以在大型样品下提取脸部的全球特征的问题,但是脸部局部特征难以处理,本文使用LBP(局部二进制图案, LBP)算法提取面部的纹理特征,提取的纹理功能与2DPCA提取到多个特征融合的全局功能集成,使得融合功能可以考虑全局和本地功能,并具有更好的识别结果。然后使用所获得的融合特征作为输入,在卷积神经网络中训练,并根据样本集的特征向量测量相似度和训练后的训练集,可以实现多重特征融合面部识别。通过对模拟实验的分析,发现,与单独使用全局特征或局部特征的使用相比,通过由2DPCA提取的全局特征的多特征融合而获得的融合功能和由LBP算法提取的本地特征具有更好的识别效果在大数据环境中。在卷积神经网络训练并识别出该特征之后,获得了高识别精度率,这可以表明本文中设计的面部识别方法在大数据的时代具有良好的应用潜力。在大数据的背景下,人脸识别的准确性可以达到90%以上,这可以满足社会的需求。 (c)2020由elsevier b.v发布。

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