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人类-人工智能协作在早期形状探索中的感知价值:探索性评估。

The perceived value of human-AI collaboration in early shape exploration: An exploratory assessment.

机构信息

Department of Mechanical Engineering, Carnegie Mellon University, Pittsburgh, PA, United States of America.

出版信息

PLoS One. 2022 Sep 12;17(9):e0274496. doi: 10.1371/journal.pone.0274496. eCollection 2022.

Abstract

As a vital element of early shape exploration, divergence can be time-consuming and challenging, with iterative cycles where idea fixation and creative blocks must be overcome for fuzzy ideas to be fully expanded and understood. Despite interesting tools that have been developed for this purpose, some important challenges remain, as it appears that many designers still prefer simple freehand sketching and tend to defer the use of computational tools to later stages. This work presents an exploratory assessment of the perceived value of a new tool, Shapi, developed to assist early shape exploration by addressing some of the pitfalls reported in the literature. Shapi is envisioned as an autonomous assistant that provides local and global shape variations in the form of rough sketches based on an initial human sketch and interactive cycles. These shape variations are What-If scenarios and cognitive facilitators that may spark new ideas or enable a deeper understanding of the shape and the identification of interesting patterns. Shapi's capabilities are explored in a diverse set of case studies with different purposes: nine implementations in industrial design, three in graphic design, and five with open-ended artistic purposes. These implementations are then used in a survey about initial perceived value in which the majority gave high ratings in terms of exploration (75.5% ≥ 4 out of 5), interpretation (83.7% ≥ 4), adaptation (77.6% ≥ 4), value (73.5% ≥ 4), creativity (69.4% ≥ 4), and general interest in the tool (79.6% ≥ 4). This work brings insight into promising functionalities, opportunities, and risks in the intersection between artificial intelligence, design, and art.

摘要

作为早期形状探索的重要元素,发散可能既耗时又具有挑战性,需要经过迭代循环,克服思维定式和创意障碍,才能充分展开和理解模糊的想法。尽管为此开发了一些有趣的工具,但仍存在一些重要的挑战,因为似乎许多设计师仍然更喜欢简单的徒手草图,并且倾向于将计算工具的使用推迟到后期阶段。这项工作对一种新工具 Shapi 的感知价值进行了探索性评估,该工具旨在通过解决文献中报道的一些陷阱来辅助早期形状探索。Shapi 被设想为一个自主助手,它可以根据初始的人类草图和交互循环,以粗糙草图的形式提供局部和全局形状变化。这些形状变化是“如果......会怎样”的情景和认知促进因素,可以激发新的想法或帮助更深入地理解形状和识别有趣的模式。Shapi 的功能在具有不同目的的一系列案例研究中进行了探索:工业设计中有九个实现,图形设计中有三个,开放式艺术目的有五个。然后,这些实现被用于一项关于初始感知价值的调查,其中大多数人在探索(75.5%≥4 分)、解释(83.7%≥4 分)、适应(77.6%≥4 分)、价值(73.5%≥4 分)、创造力(69.4%≥4 分)和对工具的普遍兴趣(79.6%≥4 分)方面给予了高分。这项工作深入了解了人工智能、设计和艺术交叉点的有前途的功能、机会和风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c1d9/9467378/9b2ac7528f88/pone.0274496.g001.jpg

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