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首页> 外文期刊>Computer vision and image understanding >Cross-view image synthesis using geometry-guided conditional GANs
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Cross-view image synthesis using geometry-guided conditional GANs

机译:使用几何引导条件GAN的跨视图图像合成

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摘要

We address the problem of generating images across two drastically different views, namely ground (street) and aerial (overhead) views. Image synthesis by itself is a very challenging computer vision task and is even more so when generation is conditioned on an image in another view. Due to the difference in viewpoints, there is small overlapping field of view and little common content between these two views. Here, we try to preserve the pixel information between the views so that the generated image is a realistic representation of cross view input image. For this, we resort to homography as a guide to map the images between the views based on the common field of view to preserve the details in the input image. We then use generative adversarial networks to inpaint the missing regions in the transformed image and add realism to it. Our exhaustive evaluation and model comparison demonstrate that utilizing geometry constraints adds fine details to the generated images and can be a better approach for cross view image synthesis than purely pixel based synthesis methods.
机译:我们解决了在两个截然不同的视图(即地面(街道)视图和空中(顶置)视图)中生成图像的问题。图像合成本身是一项非常具有挑战性的计算机视觉任务,当生成以另一种视图中的图像为条件时,图像合成就更是如此。由于视点的差异,这两个视图之间的视野重叠很小,共同的内容也很少。在这里,我们尝试保留视图之间的像素信息,以便生成的图像是交叉视图输入图像的真实表示。为此,我们求助于单应性,以根据公共视场在视图之间映射图像,以在输入图像中保留细节。然后,我们使用生成对抗网络来修补变换后的图像中的缺失区域,并为其添加逼真度。我们的详尽评估和模型比较表明,利用几何约束可以为生成的图像添加精细的细节,并且与纯基于像素的合成方法相比,它可以是用于交叉视图图像合成的更好方法。

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