Neural Style Transfer via Meta Networks

Falong Shen, Shuicheng Yan, Gang Zeng
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引用次数: 105

Abstract

In this paper we propose a noval method to generate the specified network parameters through one feed-forward propagation in the meta networks for neural style transfer. Recent works on style transfer typically need to train image transformation networks for every new style, and the style is encoded in the network parameters by enormous iterations of stochastic gradient descent, which lacks the generalization ability to new style in the inference stage. To tackle these issues, we build a meta network which takes in the style image and generates a corresponding image transformation network directly. Compared with optimization-based methods for every style, our meta networks can handle an arbitrary new style within 19 milliseconds on one modern GPU card. The fast image transformation network generated by our meta network is only 449 KB, which is capable of real-time running on a mobile device. We also investigate the manifold of the style transfer networks by operating the hidden features from meta networks. Experiments have well validated the effectiveness of our method. Code and trained models will be released.
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通过元网络的神经风格迁移
本文提出了一种在神经风格迁移的元网络中通过一次前馈传播生成指定网络参数的新方法。目前关于风格迁移的研究通常需要针对每一种新风格训练图像变换网络,并且风格是通过大量的随机梯度下降迭代编码到网络参数中,在推理阶段缺乏对新风格的泛化能力。为了解决这些问题,我们构建了一个元网络,该网络直接接收风格图像并生成相应的图像转换网络。与针对每种风格的基于优化的方法相比,我们的元网络可以在一个现代GPU卡上在19毫秒内处理任意新风格。我们的元网络生成的快速图像变换网络只有449 KB,能够在移动设备上实时运行。我们还通过操作元网络中的隐藏特征来研究风格迁移网络的流形。实验验证了该方法的有效性。代码和训练过的模型将被发布。
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