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An Feature Image Generation Based on Adversarial Generation Network

机译:基于对抗生成网络的特征图像生成

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Generative antagonistic network (GAN) was proposed in 2014 to assist in generating realistic visual images, which has become one of the most popular research objects in deep learning in recent years. In the field of image generation, GAN is more effective than the traditional method, but it is difficult to train, unstable network and difficult to convergence. In this paper, GAN is applied in the field of feature image generation, and a new framework is proposed based on the C-SEGAN. By adding additional condition features to generator and discriminator, the similarity of distributed error is learned, and the discriminator is self-encoder, the mean square error loss is added to discriminator, and the generated model generates the specified sample. The model can generate the specified clear image according to the feature conditions. The experimental results show that the method can achieve faster convergence rate and generate better quality and diversity images with a simpler network than other supervised class generation models.
机译:生成对抗网络(GAN)于2014年提出,旨在协助生成逼真的视觉图像,它已成为近年来深度学习中最受欢迎的研究对象之一。在图像生成领域,GAN比传统方法更有效,但训练困难,网络不稳定且难以收敛。本文将GAN应用于特征图像生成领域,并提出了一种基于C-SEGAN的新框架。通过向生成器和鉴别器添加其他条件特征,了解分布误差的相似性,鉴别器为自编码器,将均方误差损失添加到鉴别器,然后生成的模型将生成指定的样本。该模型可以根据特征条件生成指定的清晰图像。实验结果表明,与其他有监督的类生成模型相比,该方法可通过更简单的网络实现更快的收敛速度并生成更好的质量和多样性的图像。

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