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Classifying for a mixture of object images and character patterns by using CNN pre-trained for large-scale object image dataset

机译:通过使用针对大型对象图像数据集进行预训练的CNN,对对象图像和字符模式的混合进行分类

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Neural networks are a powerful means of classifying object images and character patterns. The proposed common classification method for object images and handwritten digits combines convolutional neural networks (CNNs) and support vector machines (SVMs). A pre-trained CNN, called Alex-Net, is used as a pattern-feature extractor. Alex-Net is pre-trained for the large-scale object-image dataset ImageNet. An SVM is used as trainable classifier. The feature vectors are passed to the SVM from Alex-Net. A mixture of STL-10 object images and MNIST handwritten digit patterns is trained by the SVM. Experimental test error rate for the mixture of test 8k STL-10 object images and 10k MNIST digit patterns was 7.734%, which shows that the proposed method is effective for common-category classification.
机译:神经网络是对对象图像和字符模式进行分类的有力手段。所提出的用于对象图像和手写数字的通用分类方法结合了卷积神经网络(CNN)和支持向量机(SVM)。预训练的CNN(称为Alex-Net)用作模式特征提取器。 Alex-Net已针对大型对象图像数据集ImageNet进行了预训练。 SVM用作可训练的分类器。特征向量从Alex-Net传递到SVM。 SVM训练STL-10对象图像和MNIST手写数字图案的混合体。 8k STL-10物体图像和10k MNIST数字图案混合的实验测试错误率为7.734 \%,表明该方法对普通类别分类是有效的。

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