Image harmonization with spatial feature interaction and back-projection upsample

Tianyanshi Liu, Yuhang Li, Youdong Ding
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Abstract

Without any processing, the synthetic image visually unrealistic due to the established differences in the appearance of the foreground and background. In view of this situation, the task of image harmonization arises at the historic moment, and its purpose is to adjust the foreground appearance of a synthesized image to be closer to the background, thereby eliminating local visual differences. However, due to the limitation of the spatial feature interaction range in the feature extraction process, the global appearance transfer effect is not good. Therefore, to solve this problem, we propose an enhanced spatial feature interaction module. Meanwhile, we propose a back-projection up sampling module, which refines the reconstruction error during the reconstruction up sampling process and better restores the details of the reconstruction foreground. Our experiments on a public dataset, iHarmony4, show that the method effectively generates synthetic images with consistent overall appearance and enhanced detail.
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基于空间特征交互和上样反投影的图像协调
未经任何处理,合成的图像在视觉上不现实,由于既定的前景和背景的外观差异。鉴于这种情况,图像协调的任务应运而生,其目的是调整合成图像的前景外观,使其更接近背景,从而消除局部视觉差异。然而,在特征提取过程中,由于空间特征交互范围的限制,整体外观转移效果不佳。因此,为了解决这一问题,我们提出了一个增强的空间特征交互模块。同时,我们提出了一种反向投影上采样模块,该模块可以细化重建上采样过程中的重建误差,更好地恢复重建前景的细节。我们在公共数据集iHarmony4上的实验表明,该方法有效地生成了具有一致整体外观和增强细节的合成图像。
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