BO作为助手:使用贝叶斯优化异步生成设计建议

Yuki Koyama, Masataka Goto
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引用次数: 4

摘要

许多设计任务涉及参数调整,设计师经常通过前后操纵滑块来努力找到理想的参数值组合。对于这样的多维搜索问题,贝叶斯优化(BO)因其智能采样策略而成为一种很有前途的技术;在每次迭代中,BO同时考虑探索(即未探索区域的优先级)和开发(即有希望的区域的优先级),对最有效的点进行采样,从而实现高效的搜索。然而,现有的基于bo的设计框架在设计过程中占据了主动权,因此不够灵活,不能让设计师利用他们的领域知识自由探索设计空间。在本文中,我们提出了一个新颖的设计框架,BO作为助手,它使设计师在设计过程中掌握主动权,同时也受益于BO的采样策略。设计师可以像往常一样操作滑块;系统监控滑块的操作,动态自动估计设计目标,然后使用BO的采样策略异步提供未探索但有希望的建议。设计师可以随时选择使用这些建议。该框架使用一种新颖的技术,通过观察滑块操作来自动提取运行BO所需的信息,而无需请求额外的输入。我们的框架是领域不可知的,通过将其应用于照片颜色增强,个人制造的3D形状设计和计算机图形学中的程序材料设计来证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BO as Assistant: Using Bayesian Optimization for Asynchronously Generating Design Suggestions
Many design tasks involve parameter adjustment, and designers often struggle to find desirable parameter value combinations by manipulating sliders back and forth. For such a multi-dimensional search problem, Bayesian optimization (BO) is a promising technique because of its intelligent sampling strategy; in each iteration, BO samples the most effective points considering both exploration (i.e., prioritizing unexplored regions) and exploitation (i.e., prioritizing promising regions), enabling efficient searches. However, existing BO-based design frameworks take the initiative in the design process and thus are not flexible enough for designers to freely explore the design space using their domain knowledge. In this paper, we propose a novel design framework, BO as Assistant, which enables designers to take the initiative in the design process while also benefiting from BO’s sampling strategy. The designer can manipulate sliders as usual; the system monitors the slider manipulation to automatically estimate the design goal on the fly and then asynchronously provides unexplored-yet-promising suggestions using BO’s sampling strategy. The designer can choose to use the suggestions at any time. This framework uses a novel technique to automatically extract the necessary information to run BO by observing slider manipulation without requesting additional inputs. Our framework is domain-agnostic, demonstrated by applying it to photo color enhancement, 3D shape design for personal fabrication, and procedural material design in computer graphics.
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