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Dsrn: an Efficient Deep Network for Image Relighting

机译:DSRN:一种高效的图像致密网络

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Custom and natural lighting conditions can be emulated in images of the scene during post-editing. Extraordinary capabilities of the deep learning framework can be utilized for such purpose. Deep image relighting allows automatic photo enhancement by illumination-specific retouching. Most of the state-of-the-art methods for relighting are run-time intensive and memory inefficient. In this paper, we propose an efficient, real-time framework Deep Stacked Relighting Network (DSRN) for image relighting by utilizing the aggregated features from input image at different scales. Our model is very lightweight with total size of about 42 MB and has an average inference time of about 0.0116s for image of resolution $1024imes 1024$ which is faster as compared to other multi-scale models. Proposed method is quite robust for translating image color-temperature from input image to target image. The method also performs moderately for light gradient generation with respect to the target image. Additionally, we demonstrate that the results further improve when images illuminated from opposite directions are utilized as input.
机译:在编辑后场景的图像中可以模拟定制和自然照明条件。可以使用深度学习框架的非凡能力以用于此目的。深度图像致密允许通过特定照明的矫正来自动照片增强。最先进的致密方法是运行时密集型和内存效率低下。在本文中,我们通过利用不同尺度的输入图像的聚合特征提出了一种有效的实时框架深层堆叠的致密网络(DSRN),用于图像复合。我们的模型非常轻,总面积约为42 MB,具有约0.0116秒的平均推理时间为1024美元1024 $的图像,与其他多尺度模型相比更快。提出的方法对于将图像颜色温度从输入图像转换为目标图像是非常稳健的。该方法还适度地执行关于目标图像的光梯度产生。另外,我们证明了当从相反方向照射的图像被用作输入时进一步改善。

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