We present a novel two-stage approach for automated floorplan design in residential buildings with a given exterior wall boundary. Our approach has the unique advantage of being human-centric, that is, the generated floorplans can be geometrically plausible, as well as topologically reasonable to enhance resident interaction with the environment. From the input boundary, we first synthesize a human-activity map that reflects both the spatial configuration and human-environment interaction in an architectural space. We propose to produce the human-activity map either automatically by a pre-trained generative adversarial network (GAN) model, or semi-automatically by synthesizing it with user manipulation of the furniture. Second, we feed the human-activity map into our deep framework ActFloor-GAN to guide a pixel-wise prediction of room types. We adopt a re-formulated cycle-consistency constraint in ActFloor-GAN to maximize the overall prediction performance, so that we can produce high-quality room layouts that are readily convertible to vectorized floorplans. Experimental results show several benefits of our approach. First, a quantitative comparison with prior methods shows superior performance of leveraging the human-activity map in predicting piecewise room types. Second, a subjective evaluation by architects shows that our results have compelling quality as professionally-designed floorplans and much better than those generated by existing methods in terms of the room layout topology. Last, our approach allows manipulating the furniture placement, considers the human activities in the environment, and enables the incorporation of user-design preferences.
翻译:我们提出一个新的两阶段方法,用于在具有特定外墙界限的住宅建筑中自动设计楼层规划。我们的方法具有以人为中心的独特优势,即产生的楼层规划可以具有几何貌似合理,而且从地形学上合理,可以加强居民与环境的互动。从输入边界,我们首先将反映空间配置和建筑空间中人类-环境互动的人类活动图合成为建筑空间的人类活动图。我们提议通过预先训练的基因对抗网络模型(GAN)自动制作人的活动地图,或者通过将它与家具的用户操控结合起来而半自动制作。第二,我们把人的活动图纳入我们的深框架“Acloor-GAN”中,用以指导对房间类型作出像样的预测。我们首先在ActFloor-GAN中采用了一个反映空间配置和人类-环境相互作用的调整周期性限制,以便我们能够产生高质量的房间布局,从而可以很容易地转换成传感式的基计划。实验结果显示我们的方法的一些好处。首先,将人的活动图的定量比较与先前的系统化方法相比,显示了高端的系统化的系统化的系统化的系统化质量。我们以最精确的建筑活动的方式展示了人类活动的结果。