无限藤壶:从个人快照看gan中的AI图像和想象力

E. Salvaggio
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摘要

今天的人工智能图像生成工具从数据集创建图像。这些训练集通常是来自万维网的图像。然而,艺术家可以从照片中生成自己的数据集。本文探讨了这样一个过程。在这篇文章中,艺术家讨论了从个人记忆图像中训练生成对抗网络(GAN)。这些图像不是作为公共艺术作品在这里分享,而是作为个人照片:由机器复制和新想象的快照。本文探讨了人工智能图像生成对记忆和想象的扭曲,将摄影的思想与控制论联系起来,揭示了人工智能现阶段图像理论化的新方法。它的结论是,人工智能图像理论可以借鉴传统摄影理论,但必须检查其区别
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Infinite Barnacle: The AI Image and Imagination in GANs from Personal Snapshots
Today’s artificial intelligence image generation tools create images from datasets. These training sets are typically images sourced from the World Wide Web. However, artists may produce their own datasets from photographs. This essay explores one such process. In it, the artist discusses training a generative adversarial network (GAN) from images of personal memories. These images are shared here not as public artworks, but as personal photographs: snapshots reproduced and newly imagined by a machine. The essay explores the distortion that AI image generation introduces to memory and imagination, connecting ideas of photography to cybernetics to expose new ways of theorizing the image in the current stage of AI. It concludes that a theory of AI imagery may borrow from theories of traditional photography but must examine its distinctions
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