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Semantic Image Synthesis from Inaccurate and Coarse Masks

机译:来自不准确和粗罩的语义图像合成

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Semantic image synthesis is an image-to-image translation problem where the goal is to learn mapping from semantic segmentation masks to corresponding photorealistic images. However, conventional semantic image synthesis methods require numerous pairs of correct semantic masks and real images, and collecting these pairs is not always possible. To address this issue, we propose a smoothing method, which we call local label smoothing (LLS), that incorporates label smoothing per small patch of an input mask to learn mapping from masks to images even when semantic masks are inaccurate. Furthermore, we also propose an extended method for coarse masks. We demonstrate the advantage of the proposed methods over existing methods to deal with noisy masks on several datasets.
机译:语义图像合成是图像到图像的图像到图像转换问题,其中目标是从语义分段掩模到相应的光电环境符号从语义分段掩模映射。 然而,传统的语义图像合成方法需要许多正确的正确语义掩模和真实图像,并不总是可以收集这些对。 为了解决这个问题,我们提出了一种平滑方法,我们调用本地标签平滑(LLS),该方法包括每小时输入掩码的标签平滑,即使语义掩模不准确,也可以从掩模到图像从掩模到图像映射。 此外,我们还提出了一种延长的粗口罩方法。 我们展示了在几个数据集上处理嘈杂掩码的现有方法的提出方法的优势。

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