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Understanding and boosting of deep convolutional neural network based on sample distribution

机译:基于样本分布的深度卷积神经网络的理解和增强

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In order to improve the generalization ability of deep convolutional neural networks, an improved training strategy based on anomalous sample penalty term is introduced in this paper. We first establish an anomalous sample detection mechanism on the basis of preliminary neural network model, then we use the new loss function based on sample distribution to search an optimized feature boundary. A better boundary can improve the performance of the network over the test set. Then we discuss the effect of the convolutional neural network from the point of view of the sample distribution through a clean database created by ourselves. In the experiments, we compare the classification results of seven typical deep convolutional neural networks on different image databases. At the cost of reducing a little accuracy of training set, the classification accuracy of test set is improved significantly. We get the classification accuracy of 95.4%, 95.7% and 85.4% on Caltech-101, Cifar-10, Cifar-100 respectively. Finally, we analyze the influence of samples with anomalous distribution on network generalization capability through dimensionality reduction visualization.
机译:为了提高深度卷积神经网络的泛化能力,提出了一种基于异常样本惩罚项的改进训练策略。首先在初步的神经网络模型的基础上建立异常样本检测机制,然后利用基于样本分布的新损失函数搜索优化的特征边界。更好的边界可以提高测试集上网络的性能。然后,我们将从样本分布的角度通过自己创建的干净数据库来讨论卷积神经网络的效果。在实验中,我们比较了七个典型的深度卷积神经网络在不同图像数据库上的分类结果。以降低训练集精度为代价,大大提高了测试集的分类精度。我们在Caltech-101,Cifar-10和Cifar-100上分别获得95.4%,95.7%和85.4%的分类准确率。最后,我们通过降维可视化分析异常分布样本对网络泛化能力的影响。

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