一种改进感知哈希算法的2DPCANet人脸识别方法

A 2DPCANet Face Recognition Method Based on Improved Perceptual Hashing Algorithm

  • 摘要: 针对主成分分析在模拟卷积核时造成的计算量增大以及损坏图像本身结构的问题, 提出了一种基于改进感知哈希算法的2DPCANet人脸识别方法。该方法在主成分分析网络的基础上, 利用二维主成分分析替换原有网络架构中的主成分分析的计算过程, 并利用二值哈希算法和分块直方图提取图像局部特征, 最后采用支持向量机和极限学习机进行分类, 以实现人脸图像的分类。在FERET数据集和LFW人脸数据库上, 对比了所提方法与其他几种方法在人脸识别任务中的识别效果, 实验结果表明: 所提出的人脸识别方法比其他方法在识别率上提高了10%~21%.

     

    Abstract: In order to solve the problem of increasing computation and damaging image structure caused by principal component analysis (PCA) in convolution kernel simulation, a 2DPCANet face recognition method based on improved perceptual hashing algorithm is proposed. Based on the principal component analysis network, the method replaces the calculation process of principal component analysis in the original network architecture with two-dimensional principal component analysis, extracts the local features of the image with binary hash and block histogram, and finally classifies the face image with support vector machine and limit learning machine. Based on FERET data set and LFW face database, the recognition effect of the proposed method and several comparison methods in face recognition task is compared. The experimental results show that the proposed method improves the recognition rate by 10%~21% compared with other methods.

     

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