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Preprocessing for Image Classification by Convolutional Neural Networks

机译:通过卷积神经网络预处理进行图像分类

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In recent times, the Convolutional Neural Networks have become the most powerful method for image classification. Various researchers have shown the importance of network architecture in achieving better performances by making changes in different layers of the network. Some have shown the importance of the neuron's activation by using various types of activation functions. But here we have shown the importance of preprocessing techniques for image classification using the CIFAR10 dataset and three variations of the Convolutional Neural Network. The results that we have achieved, clearly shows that the Zero Component Analysis(ZCA) outperforms both the Mean Normalization and Standardization techniques for all the three networks and thus it is the most important preprocessing technique for image classification with Convolutional Neural Networks.
机译:最近,卷积神经网络已成为图像分类最强大的方法。各种研究人员通过在不同层的不同层的变化中实现了更好的性能来实现网络架构的重要性。有些人通过使用各种类型的激活功能来表明神经元激活的重要性。但是,在这里,我们已经使用CIFAR10数据集和卷积神经网络的三个变体来显示预处理技术的预处理技术的重要性。我们已经实现的结果清楚地表明零分量分析(ZCA)优于所有三个网络的平均归一化和标准化技术,因此是具有卷积神经网络的图像分类的最重要预处理技术。

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