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Inception and ResNet: Same Training, Same Features

机译:成立和reset:相同的培训,特征相同

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Deep convolutional neural networks (CNNs) are the dominant technology in computer vision today. Unfortunately, it's not clear how different from each other the best CNNs really are. This paper measures the similarity between two well-known CNNs, Inception and ResNet, in terms of the features they extract from images. We find that Inception's features can be well approximated as an affine transformation of ResNet's features and vice-versa. The similarity between Inception and ResNet features is surprising. Convolutional neural networks learn complex non-linear features of images, and the architectural differences between the systems suggest that these functions should take different forms. Instead, they seem to have converged on similar solutions. This suggests that the selection of the training set may be more important than the selection of the convolutional architecture.
机译:深度卷积神经网络(CNNS)是当今计算机愿景中的主导技术。不幸的是,目前尚不清楚彼此的不同CNN真的是多么不同。本文在从图像中提取的特征方面测量两个众所周知的CNNS,Inception和Reset之间的相似性。我们发现成立的功能可以很好地近似为Reset的功能的仿射转换,反之亦然。成立与Resnet特征之间的相似性令人惊讶。卷积神经网络学习图像的复杂非线性特征,系统之间的架构差异表明这些功能应该采用不同的形式。相反,他们似乎融合在类似的解决方案上。这表明训练集的选择可能比选择卷积架构更重要。

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