人工智能文本提示生成图像可视化的生物材料研究驱动设计

Q2 Engineering
Designs Pub Date : 2023-03-24 DOI:10.3390/designs7020048
Yomna K. Abdallah, A. T. Estévez
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引用次数: 0

摘要

自2022年以来,人工智能文本到图像生成的图像彻底改变了设计过程,并迅速发展。通过文本表达设计概念,在几秒钟内生成各种完美渲染的迭代。这种高潜力的工具为生物材料研究驱动的设计开辟了广阔的可能性。这是基于在设计领域和建筑环境中开发多尺度应用的生物材料。从家具到建筑元素再到建筑。人工智能文本到图像模型的巨大能力增强了这种设计过程的方法,可以将高保真和创新的渲染可视化,从微观到宏观地反映所提出的生物材料的非常详细的物理特性。然而,这种由人工智能文本到图像模型辅助的生物材料研究驱动的设计方法需要评估在设计过程中使用人工智能图像生成模型的作用和效率的标准。此外,由于生物材料研究驱动型设计不仅关注设计研究,而且关注生物材料工程研究和过程,因此需要有足够的方法来保护其新颖性和版权。自2022年底出现以来,人工智能文本到图像模型引发了对设计作者身份和设计师版权的令人担忧的道德担忧。这就需要建立一种引用方法,通过提出一种辅助的AI模型来自动引用这些AI生成的图像及其训练数据,从而保护这些生成渲染的设计者的版权以及引用其训练数据的作者的版权。因此,目前的工作通过分析作者在人工智能文本到图像模型的辅助下执行的生物材料研究驱动设计项目的两个案例,评估了人工智能文本到图像模型在生物材料研究驱动设计过程中的作用及其操作方法。基于这一分析结果,将提出设计标准,以公平地实践人工智能辅助生物材料研究驱动过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biomaterials Research-Driven Design Visualized by AI Text-Prompt-Generated Images
AI text-to-image generated images have revolutionized the design process and its rapid development since 2022. Generating various iterations of perfect renders in few seconds by textually expressing the design concept. This high-potential tool has opened wide possibilities for biomaterials research-driven design. That is based on developing biomaterials for multi-scale applications in the design realm and built environment. From furniture to architectural elements to architecture. This approach to the design process has been augmented by the massive capacity of AI text-to-image models to visualize high-fidelity and innovative renders that reflect very detailed physical characteristics of the proposed biomaterials from micro to macro. However, this biomaterials research-driven design approach aided by AI text-to-image models requires criteria for evaluating the role and efficiency of employing AI image generation models in this design process. Furthermore, since biomaterials research-driven design is focused not only on design studies but also the biomaterials engineering research and process, it requires a sufficient method for protecting its novelty and copyrights. Since their emergence in late 2022, AI text-to-image models have been raising alarming ethical concerns about design authorship and designer copyrights. This requires the establishment of a referencing method to protect the copyrights of the designers of these generated renders as well as the copyrights of the authors of their training data referencing by proposing an auxiliary AI model for automatic referencing of these AI-generated images and their training data as well. Thus, the current work assesses the role of AI text-to-image models in the biomaterials research-driven design process and their methodology of operation by analyzing two case studies of biomaterials research-driven design projects performed by the authors aided by AI text-to-image models. Based on the results of this analysis, design criteria will be presented for a fair practice of AI-aided biomaterials research-driven process.
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来源期刊
Designs
Designs Engineering-Engineering (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
11 weeks
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