The recent explosion of high-quality image-to-image methods has prompted interest in applying image-to-image methods towards artistic and design tasks. Of interest for architects is to use these methods to generate design proposals from conceptual sketches, usually hand-drawn sketches that are quickly developed and can embody a design intent. More specifically, instantiating a sketch into a visual that can be used to elicit client feedback is typically a time consuming task, and being able to speed up this iteration time is important. While the body of work in generative methods has been impressive, there has been a mismatch between the quality measures used to evaluate the outputs of these systems and the actual expectations of architects. In particular, most recent image-based works place an emphasis on realism of generated images. While important, this is one of several criteria architects look for. In this work, we describe the expectations architects have for design proposals from conceptual sketches, and identify corresponding automated metrics from the literature. We then evaluate several image-to-image generative methods that may address these criteria and examine their performance across these metrics. From these results, we identify certain challenges with hand-drawn conceptual sketches and describe possible future avenues of investigation to address them.
翻译:最近高质量的图像转换方法的普及引发了人们对将这些方法应用于艺术和设计任务的兴趣。建筑师感兴趣的是使用这些方法从概念手绘草图生成设计方案,通常是快速开发并能体现设计意图的手绘草图。更具体地说,将手绘草图转化为可用于引起客户反馈的视觉元素通常是一项耗时的任务,能够加速迭代时间至关重要。尽管生成方法的研究成果令人瞩目,但度量这些系统输出的质量标准与建筑师实际期望存在不匹配情况。特别是,大多数最近的基于图像的研究强调生成图像的真实性。虽然重要,但这只是建筑师寻求的多个标准之一。在这项工作中,我们描述了建筑师对从概念草图生成设计方案的期望,确定了来自文献中的相应自动化指标。然后,我们对几种可能满足这些标准的图像生成方法进行评估,并检查它们在这些指标下的表现。通过这些结果,我们确定了手绘概念草图中存在的某些挑战,并描述了可能的未来研究方向。