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Face recognition based on improved VGGNET convolutional neural network

机译:基于改进的VGGNET卷积神经网络的人脸识别

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Currently, many famous convolutional neural networks depend on massive training samples and high-performance computers. To solve this problem, this paper improves the deep learning algorithm VGGNet for image classification and proposes a face recognition method called MicroFace. MicroFace uses CASIA WebFace database as the testing and training samples. Our research shows that compared with the original algorithm, the improved algorithm reduces the parameters, improves the pooling function, and increases the number of convolution kernels, which not only decreases the dependence on massive training samples and high-performance computers, but also achieves 96% recognition rate with good recognition performance and certain practicability.
机译:目前,许多着名的卷积神经网络取决于大量训练样本和高性能电脑。为了解决这个问题,本文改善了用于图像分类的深度学习算法VGGNet,并提出了一种称为Microface的人脸识别方法。 Microface使用Casia Webface数据库作为测试和培训样本。我们的研究表明,与原始算法相比,改进的算法减少了参数,改善了汇集功能,并增加了卷积内核的数量,这不仅降低了大量训练样本和高性能计算机的依赖,而且还实现了96个%识别率良好的识别性能和某些实用性。

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