Furnishing and rendering indoor scenes has been a long-standing task for interior design, where artists create a conceptual design for the space, build a 3D model of the space, decorate, and then perform rendering. Although the task is important, it is tedious and requires tremendous effort. In this paper, we introduce a new problem of domain-specific indoor scene image synthesis, namely neural scene decoration. Given a photograph of an empty indoor space and a list of decorations with layout determined by user, we aim to synthesize a new image of the same space with desired furnishing and decorations. Neural scene decoration can be applied to create conceptual interior designs in a simple yet effective manner. Our attempt to this research problem is a novel scene generation architecture that transforms an empty scene and an object layout into a realistic furnished scene photograph. We demonstrate the performance of our proposed method by comparing it with conditional image synthesis baselines built upon prevailing image translation approaches both qualitatively and quantitatively. We conduct extensive experiments to further validate the plausibility and aesthetics of our generated scenes. Our implementation is available at \url{https://github.com/hkust-vgd/neural_scene_decoration}.
翻译:在室内设计中,艺术家为空间设计了概念设计,建造了空间的3D模型,装饰了空间的3D模型,然后进行演化。尽管这项任务很重要,但是是乏味的,需要付出巨大的努力。在本文件中,我们引入了室内特定领域图像合成的新问题,即神经场景装饰。鉴于室内空空间的照片和由用户决定的布局清单,我们的目标是将同一空间的新图像与所需的家具和装饰结合起来。神经场景装饰可用于以简单而有效的方式创建概念性内部设计。我们试图解决这一研究问题,是一个将空场景和物体布局转换成现实化的现场照片的新型场景生成结构。我们通过在质量和数量上将它与基于普遍图像翻译方法的有条件图像合成基线进行比较,来展示我们拟议方法的绩效。我们进行了广泛的实验,以进一步验证我们生成的场景的可信赖性和美观性。我们的实施情况可在以下https://github.com/hkust_decard_decalationalation.