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An improved residual network model for image recognition using a combination of snapshot ensembles and the cutout technique

机译:结合快照合奏和抠图技术的改进的残差网络模型用于图像识别

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NUF-Net (Naresuan University and Fiber One Public Company Limited Network) is a new and improved Convolutional Neural Network (CNN) model based on the previously developed NU-LiteNet model. Improvements in accuracy were achieved by adding the identity mapping technique of the ResNet model and incorporating Snapshot Ensembles and the Cutout technique into the NU-LiteNet model. We modified the structure of the convolution layers by changing any filters of a size larger than 3 x3, into a 3 x3 filter, thereby significantly reducing processing time and reducing the error rate. To test the effectiveness of our modifications, we developed 10 variations of the NUF-Net-Residual model, one of which, termed NUF-Net-Residual-102, achieved significantly lower error rates than both ResNet and Wide-ResNet when using CIFAR-10, CIFAR-100 and Tiny-ImageNet datasets. The relative error rates were 2.94% for CIFAR-10, 17.57% for CIFAR-100 and 29.57% for Tiny-ImageNet. As well, NUF-Net-Residual-102 achieved a model parameter size of 31.65 million which is a lower value than for Wide-ResNet-32 (46.16 million), although higher than ResNet-1202 (19.42 million).
机译:NUF-Net(Naresuan大学和第一光纤公司)是一种基于先前开发的NU-LiteNet模型的改进的卷积神经网络(CNN)模型。通过添加ResNet模型的身份映射技术并将Snapshot Ensembles和Cutout技术合并到NU-LiteNet模型中,可以提高准确性。我们通过将任何大小大于3 x3的滤波器更改为3 x3滤波器来修改卷积层的结构,从而显着减少了处理时间并降低了错误率。为了测试我们修改的有效性,我们开发了NUF-Net-Residual模型的10个变体,其中一种称为NUF-Net-Residual-102,在使用CIFAR- 10,CIFAR-100和Tiny-ImageNet数据集。 CIFAR-10的相对错误率为2.94%,CIFAR-100的为17.57%,Tiny-ImageNet的为29.57%。同样,NUF-Net-Residual-102的模型参数大小为3165万,虽然比ResNet-1202(1942万)要大,但它的值却比Wide-ResNet-32(4616万)要低。

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