AffectGAN:由语义驱动的基于情感的生成艺术

Theodoros Galanos, Antonios Liapis, Georgios N. Yannakakis
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引用次数: 9

摘要

本文介绍了一种生成表达特定情感状态的艺术图像的新方法。利用最先进的视觉生成深度学习方法(通过生成对抗网络)、OpenAI的语义模型和视觉艺术百科全书WikiArt的注释数据集,我们的affectan模型能够基于特定或广泛的语义提示和预期的情感结果生成图像。由AffectGAN生成的32张图片的小数据集由50名参与者根据它们引发的特定情绪,以及它们的质量和新颖性进行注释。结果表明,在大多数情况下,作为图像生成提示的预期情绪与参与者的反应相匹配。这项小规模的研究为将情感计算与计算创造力相结合带来了新的愿景,使生成系统能够在他们希望其输出引起的情感方面具有意向性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AffectGAN: Affect-Based Generative Art Driven by Semantics
This paper introduces a novel method for generating artistic images that express particular affective states. Leveraging state-of-the-art deep learning methods for visual generation (through generative adversarial networks), semantic models from OpenAI, and the annotated dataset of the visual art encyclopedia WikiArt, our AffectGAN model is able to generate images based on specific or broad semantic prompts and intended affective outcomes. A small dataset of 32 images generated by AffectGAN is annotated by 50 participants in terms of the particular emotion they elicit, as well as their quality and novelty. Results show that for most instances the intended emotion used as a prompt for image generation matches the participants' responses. This small-scale study brings forth a new vision towards blending affective computing with computational creativity, enabling generative systems with intentionality in terms of the emotions they wish their output to elicit.
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