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Multimodal Transfer: A Hierarchical Deep Convolutional Neural Network for Fast Artistic Style Transfer

机译:多模式转移:用于快速艺术风格转移的分层深卷积神经网络

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Transferring artistic styles onto everyday photographs has become an extremely popular task in both academia and industry. Recently, offline training has replaced online iterative optimization, enabling nearly real-time stylization. When those stylization networks are applied directly to high-resolution images, however, the style of localized regions often appears less similar to the desired artistic style. This is because the transfer process fails to capture small, intricate textures and maintain correct texture scales of the artworks. Here we propose a multimodal convolutional neural network that takes into consideration faithful representations of both color and luminance channels, and performs stylization hierarchically with multiple losses of increasing scales. Compared to state-of-the-art networks, our network can also perform style transfer in nearly real-time by performing much more sophisticated training offline. By properly handling style and texture cues at multiple scales using several modalities, we can transfer not just large-scale, obvious style cues but also subtle, exquisite ones. That is, our scheme can generate results that are visually pleasing and more similar to multiple desired artistic styles with color and texture cues at multiple scales.
机译:将艺术风格转移到日常照片上已成为学术界和行业的极其受欢迎的任务。最近,离线训练已经取代了在线迭代优化,从而实现了几乎实时的程式化。然而,当这些风格化网络直接应用于高分辨率图像时,局部区域的风格通常看起来与所需的艺术风格较少。这是因为转移过程无法捕获小型复杂的纹理并维持艺术品的正确纹理尺度。在这里,我们提出了一种多模式卷积神经网络,其考虑了两种颜色和亮度通道的忠实表示,并具有越来越多的尺度的多重损耗来执行程式化。相较于国家的最先进的网络,我们的网络也可以在几乎实时通过执行更复杂的训练离线进行风格转移。通过使用多种方式的多种尺度适当地处理风格和纹理线索,我们可以转移不仅仅是大规模,明显的风格的线索,而且可以进行微妙的,精致的。也就是说,我们的方案可以生成视觉上令人愉悦的结果,更类似于多种尺度的颜色和纹理线索的多种所需艺术风格。

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