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Combining Convolutional Neural Network and Support Vector Machine for Gait-based Gender Recognition

机译:结合卷积神经网络和支持向量机进行基于步态的性别识别

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Recently, deep learning based on convolutional neural networks (CNN) has achieved great state-of-the-art performance in many fields such as image classification, semantic analysis and biometric recognition. Normally, the Softmax activation function is used as classifier in the last layer of CNN. However, there some studies try to replace the Softmax layer with the support vector machine (SVM) in an artificial neural network architecture and achieve great results. Inspired by these works, we research the performance of CNN with linear SVM classifier on the gender recognition based on CASIA-B dataset. In the first model, the input image's descriptors are extracted from the fully connected layer of the pre-trained VGGNet-16 model as the features to train the SVM. In the second model, we adjust VGGNet-16 with a hinge loss function using an L2 norm to create a new architecture, namely VGGNet-SVM. The results have shown that SVM shows the better performance than Softmax in VGGNet-16 to work out the gender recognition problem based on gait.
机译:最近,基于卷积神经网络(CNN)的深度学习已经在许多领域实现了巨大的最新性能,例如图像分类,语义分析和生物识别。通常,Softmax激活功能用作CNN的最后一层中的分类器。然而,有些研究试图用人工神经网络架构中的支持向量机(SVM)用Softmax层用替代品,实现了很大的结果。灵感来自这些作品,我们研究了CNN与线性SVM分类器对基于Casia-B数据集的性别识别的性能。在第一模型中,输入图像的描述符是从预先训练的VGGNET-16模型的完全连接层中提取的,作为培训SVM的功能。在第二种模型中,我们使用L2标准使用铰链损耗函数调整Vggnet-16以创建新的架构,即VgGnet-SVM。结果表明,SVM在VGGNET-16中显示出比Softmax更好的性能,以解决基于步态的性别识别问题。

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