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Texture Hallucination for Large-Factor Painting Super-Resolution

机译:大因素绘画超级分辨率的纹理幻觉

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We aim to super-resolve digital paintings, synthesizing realistic details from high-resolution reference painting materials for very large scaling factors (e.g., 8×, 16×). However, previous single image super-resolution (SISR) methods would either lose textural details or introduce unpleasing artifacts. On the other hand, reference-based SR (Ref-SR) methods can transfer textures to some extent, but is still impractical to handle very large factors and keep fidelity with original input. To solve these problems, we propose an efficient high-resolution hallucination network for very large scaling factors with efficient network structure and feature transferring. To transfer more detailed textures, we design a wavelet texture loss, which helps to enhance more high-frequency components. At the same time, to reduce the smoothing effect brought by the image reconstruction loss, we further relax the reconstruction constraint with a degradation loss which ensures the consistency between downscaled super-resolution results and low-resolution inputs. We also collected a high-resolution (e.g., 4K resolution) painting dataset PaintHD by considering both physical size and image resolution. We demonstrate the effectiveness of our method with extensive experiments on PaintHD by comparing with SISR and Ref-SR state-of-the-art methods.
机译:我们的目标是超级解析数字绘画,从高分辨率参考涂装材料合成真实的细节,以获得非常大的缩放因子(例如,8×,16×)。但是,以前的单个图像超分辨率(SISR)方法丢失了纹理细节或引入令人难快的伪影。另一方面,基于参考的SR(Ref-SR)方法可以在一定程度上传输纹理,但仍然是处理非常大的因素并保持忠诚与原始输入不切实际。为了解决这些问题,我们提出了一种高度高分辨率幻觉网络,具有高效的网络结构和特征转移的非常大的缩放因子。要传输更详细的纹理,我们设计了小波纹理损耗,有助于提高更多高频分量。同时,为了减少图像重建损失所带来的平滑效果,我们进一步放松了重建限制,并降低了劣化损失,这确保了较低的超分辨率结果和低分辨率输入之间的一致性。我们还通过考虑物理尺寸和图像分辨率来收集高分辨率(例如,4K分辨率)绘画数据集画面。我们通过与SISR和REF-SR最先进的方法进行比较,展示了我们对Painthd的广泛实验的有效性。

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