计算机与人类生成的设计草图的人类验证

C. López, Scarlett R. Miller, Conrad S. Tucker
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引用次数: 14

摘要

这项工作的目的是探索与人类创作的草图相比,计算机生成的草图的感知视觉和功能特征。此外,这项工作探讨了人类可能对计算机生成的草图的感知功能产生的偏见。深度生成设计方法的最新进展使设计师能够实现计算工具来自动生成大量新的设计思想。然而,如果计算工具要与设计师一起共同创造想法和解决方案,那么它们不仅能够产生新颖的想法,而且还能产生实用的想法,这一点需要探索。此外,由于决策者需要选择那些创造性的想法进行进一步发展以确保创新,因此需要探索他们对计算机产生的想法可能存在的偏见。在本研究中,招募了619名人类参与者,分析了50幅人类创作的2D草图和50幅由深度学习生成模型(即计算机生成)生成的2D草图的感知视觉和功能特征。结果表明,参与者认为计算机生成的草图比人类生成的草图更有功能。这种感知到的功能不受标签的影响,这些标签明确地将草图呈现为人类或计算机生成的。此外,结果显示,参与者无法将2D草图分类为人类或计算机生成的准确率高于随机概率。研究结果为支持深度学习生成式设计工具的能力及其协助设计师完成创意等创造性任务的潜力提供了证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Validation of Computer vs Human Generated Design Sketches
The objective of this work is to explore the perceived visual and functional characteristics of computer generated sketches, compared to human created sketches. In addition, this work explores the possible biases that humans may have towards the perceived functionality of computer generated sketches. Recent advancements in deep generative design methods have allowed designers to implement computational tools to automatically generate large pools of new design ideas. However, if computational tools are to co-create ideas and solutions alongside designers, their ability to generate not only novel but also functional ideas, needs to be explored. Moreover, since decision-makers need to select those creative ideas for further development to ensure innovation, their possible biases towards computer generated ideas need to be explored. In this study, 619 human participants were recruited to analyze the perceived visual and functional characteristics of 50 human created 2D sketches, and 50 2D sketches generated by a deep learning generative model (i.e., computer generated). The results indicate that participants perceived the computer generated sketches as more functional than the human generated sketches. This perceived functionality was not biased by the presence of labels that explicitly presented the sketches as either human or computer generated. Moreover, the results reveal that participants were not able to classify the 2D sketches as human or computer generated with accuracies greater than random chance. The results provide evidence that supports the capabilities of deep learning generative design tools and their potential to assist designers in creative tasks such as ideation.
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