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首页> 外文期刊>Fractals: An interdisciplinary journal on the complex geometry of nature >GAUSSIAN MIXTURE NOISED RANDOM FRACTALS WITH ADVERSARIAL LEARNING FOR AUTOMATED CREATION OF VISUAL OBJECTS
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GAUSSIAN MIXTURE NOISED RANDOM FRACTALS WITH ADVERSARIAL LEARNING FOR AUTOMATED CREATION OF VISUAL OBJECTS

机译:高斯混合用对抗自动创建视觉物体的对抗学习发出无毒分形

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摘要

Because of the self-similarity properties of nature, fractals are widely adopted as generators of natural object multimedia contents. Unfortunately, fractals are difficult to control due to their iterated function systems, and traditional researches on fractal generating visual objects focus on mathematical manipulations. In Generative Adversarial Nets (GANs), visual object generators can be automatically guided by a single image. In this work, we explore the problem of guiding fractal generators with GAN. We assume that the same category of fractal patterns is produced by a group of parameters of initial patterns, affine transformations and random noises. Connections between these fractal parameters and visual objects are modeled by a Gaussian mixture model (GMM). Generator trainings are performed as gradients on GMM instead of fractals, so that evaluation numbers of iterated function systems are minimized. The proposed model requires no mathematical expertise from the user because parameters are trained by automatic procedures of GMM and GAN. Experiments include one 2D demonstration and three 3D real-world applications, where high-resolution visual objects are generated, and a user study shows the effectiveness of artificial intelligence guidances on fractals.
机译:由于自然的自相似性,分形被广泛采用自然物体多媒体内容的发电机。不幸的是,由于其迭代的功能系统,分形是难以控制的,以及对分形生成视觉物体专注于数学操作的传统研究。在生成的对抗网(GANS)中,可视化对象发生器可以自动地由单个图像引导。在这项工作中,我们探讨了用GaN引导分形发电机的问题。我们假设相同类别的分形模式由一组初始模式,仿射变换和随机噪声的参数产生。这些分形参数和视觉对象之间的连接由高斯混合模型(GMM)建模。发电机培训作为GMM上的梯度而不是分形进行,以便最小化迭代功能系统的评估数。所提出的模型不需要来自用户的数学专业知识,因为参数是通过GMM和GaN的自动过程训练的。实验包括一个2D演示和三个3D现实世界应用,其中产生高分辨率的视觉物体,并且用户研究显示了人工智能指南对分形的有效性。

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