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Face Recognition Using Local PCA Filters

机译:使用本地PCA过滤器的人脸识别

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We propose an efficient feature extraction architecture based on PCANet. Our method performs far better than many traditional artificial feature extraction methods with the help of standalone filter learning and multiscale local feature combination. Such structure cascaded by both linear layers with convolution filters and non-linear layers in binarization process shows better adaptability in different databases. With the help of parallel computing, training time is much shorter than PCANet and also more fixed compared to convolutional neural network. Experiment in LFW and FERET shows that such a data oriented structure shows good performance both on stability and accuracy in various environments.
机译:我们提出了一种基于PCANet的高效特征提取架构。我们的方法在独立的滤波器学习和多尺度本地特征组合的帮助下表现远远优于许多传统人工特征提取方法。通过卷积滤波器和二值化过程中的非线性层级联的这种结构在不同的数据库中显示出更好的适应性。在并行计算的帮助下,与卷积神经网络相比,培训时间比PCANet短得多,也更加固定。 LFW和FERET的实验表明,这种数据面向结构在各种环境中的稳定性和准确性方面表现出良好的性能。

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