使用集成的GPT和文本到图像模型,通过提示增强增强阿拉伯语内容生成

Wala Elsharif, James She, Preslav Nakov, Simon Wong
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引用次数: 1

摘要

随着当前文本到图像建模领域的不断进步,设计提示以充分利用这些模型功能并引导它们生成最理想的图像变得至关重要,因此提示工程领域应运而生。在这里,我们研究了一种使用提示工程来增强阿拉伯文化的文本到图像模型表示的方法。这项工作提出了一种简单、新颖的提示工程方法,该方法使用最先进的语言模型GPT的领域知识来执行提示增强任务,其中使用一个简单的初始提示,通过GPT模型通过称为上下文学习的过程从多个类别中生成多个更详细的与阿拉伯文化相关的提示。然后使用增强的提示符生成针对阿拉伯文化的增强图像。我们执行多个实验的参与者评价该方法的性能,它显示了有前景的结果,特别用于生成提示更具包容性的不同的阿拉伯国家,广泛的主题形象,我们发现该方法生成图像的地方有更多的种类的85%的时间和更包容的阿拉伯国家72.66%以上的时间,而直接的方法。
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Enhancing Arabic Content Generation with Prompt Augmentation Using Integrated GPT and Text-to-Image Models
With the current and continuous advancements in the field of text-to-image modeling, it has become critical to design prompts that make the best of these model capabilities and guides them to generate the most desirable images, and thus the field of prompt engineering has emerged. Here, we study a method to use prompt engineering to enhance text-to-image model representation of the Arabic culture. This work proposes a simple, novel approach for prompt engineering that uses the domain knowledge of a state-of-the-art language model, GPT, to perform the task of prompt augmentation, where a simple, initial prompt is used to generate multiple, more detailed prompts related to the Arabic culture from multiple categories through a GPT model through a process known as in-context learning. The augmented prompts are then used to generate images enhanced for the Arabic culture. We perform multiple experiments with a number of participants to evaluate the performance of the proposed method, which shows promising results, specially for generating prompts that are more inclusive of the different Arabic countries and with a wider variety in terms of image subjects, where we find that our proposed method generates image with more variety 85 % of the time and are more inclusive of the Arabic countries more than 72.66 % of the time, compared to the direct approach.
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