资产:自回归语义场景编辑与变压器在高分辨率

Difan Liu, Sandesh Shetty, T. Hinz, Matthew Fisher, Richard Zhang, Taesung Park, E. Kalogerakis
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引用次数: 9

摘要

我们提出了ASSET,一种神经结构,用于根据用户对其语义分割图的编辑自动修改输入的高分辨率图像。我们的架构是基于一个具有新颖注意力机制的转换器。我们的关键思想是在高分辨率下稀疏变压器的注意力矩阵,在较低图像分辨率下提取密集的注意力。虽然以前的注意机制在处理高分辨率图像时在计算上过于昂贵,或者过于局限于特定的图像区域,阻碍了远程交互,但我们的新注意机制在计算上既高效又有效。我们的稀疏注意力机制能够捕捉远程互动和环境,从而综合场景中有趣的现象,例如景观在水面或植物上的反射与景观的其余部分一致,这是以前的convnets和transformer方法无法可靠地产生的。我们提出了定性和定量结果,以及用户研究,证明了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ASSET: Autoregressive Semantic Scene Editing with Transformers at High Resolutions
We present ASSET, a neural architecture for automatically modifying an input high-resolution image according to a user's edits on its semantic segmentation map. Our architecture is based on a transformer with a novel attention mechanism. Our key idea is to sparsify the transformer's attention matrix at high resolutions, guided by dense attention extracted at lower image resolutions. While previous attention mechanisms are computationally too expensive for handling high-resolution images or are overly constrained within specific image regions hampering long-range interactions, our novel attention mechanism is both computationally efficient and effective. Our sparsified attention mechanism is able to capture long-range interactions and context, leading to synthesizing interesting phenomena in scenes, such as reflections of landscapes onto water or flora consistent with the rest of the landscape, that were not possible to generate reliably with previous convnets and transformer approaches. We present qualitative and quantitative results, along with user studies, demonstrating the effectiveness of our method.
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