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Evolutionary Latent Space Exploration of Generative Adversarial Networks

机译:进化潜空间探索生成对抗网络

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Generative Adversarial Networkss (GANs) have gained popularity over the years, presenting state-of-the-art results in the generation of samples that follow the distribution of the input training dataset. While research is being done to make GANs more reliable and able to generate better samples, the exploration of its latent space is not given as much attention. The latent space is unique for each model and is, ultimately, what determines the output from the generator. Usually, a random sample vector is taken from the latent space without regard to which output it produces through the generator. In this paper, we move towards an approach for the generation of latent vectors and traversing the latent space with pre-determined criteria, using different approaches. We focus on the generation of sets of diverse examples by searching in the latent space using Genetic Algorithms and Map Elites. A set of experiments are performed and analysed, comparing the implemented approaches with the traditional approach.
机译:多年来,生成的对冲网络(GANS)已经获得了普及,呈现最先进的结果,在遵循输入训练数据集的分发的样本中的产生。虽然正在进行研究以使GAN更可靠并且能够产生更好的样本,但探索其潜在空间的探索并没有关注。潜伏空间对于每个模型是唯一的,最终是确定来自发电机的输出。通常,从潜在空间中取出随机样品矢量,而不考虑其通过发电机产生的输出。在本文中,我们走向生成潜在矢量的方法,并使用不同的方法来遍历预定标准的潜在空间。我们通过使用遗传算法和地图精英搜索潜伏空间来专注于一代多样化的例子。进行并分析一组实验,比较了具有传统方法的实施方法。

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