基于DCGAN的ImageNet图像重建预训练模型

Nandini Kumari, Shamama Anwar, Vandana Bhattacharjee
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引用次数: 4

摘要

尽管最近在生成图像建模方面取得了一些成就,但从复杂的数据集(如ImageNet)生成更高质量的图像样本仍然是一个虚幻的目标。本文的目的是在著名的CIFAR10数据集上训练深度卷积生成对抗网络,并研究这种规模下的不稳定性,然后在大规模的ImageNet数据集上进行测试,以建立所提出的DCGAN。我们发现使用预训练的DCGAN可以消除复杂性,并且可以学习图像的先验细节,提高生成图像的质量。我们对DCGAN的修改导致模型在预训练GAN的分类随机图像重建方面处于新的前沿。当在128 × 128分辨率的ImageNet上进行测试时,我们的模型(DCGAN)降低了生成图像样本和真实图像样本之间的损失,这表明所提出的DCGAN模型在两种数据集上都能很好地工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DCGAN based Pre-trained model for Image Reconstruction using ImageNet
Despite recent achievements in generative image modeling, generating better quality image samples from complex datasets such as ImageNet remains an illusory goal. The objective of this paper is to train Deep Convolutional Generative Adversarial Network at the well-known CIFAR10 dataset and study the instabilities specific to such scale and then test the large-scale ImageNet dataset for establishment of the proposed DCGAN. We find that applying a pre-trained DCGAN can remove the complexity and also can learn prior details of images and improve the quality of generated image. Our modifications on DCGAN lead to models which set the new cutting edge in class-contingent image reconstruction on pre-trained GAN's. When tested on ImageNet at 128 × 128 resolution, our model (DCGAN) lowers the loss between the generated and real image samples which shows that the proposed DCGAN model works well with both the datasets.
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