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Text to image synthesis using multi-generator text conditioned generative adversarial networks

机译:使用多个发电机文本调节生成的对冲网络文本为图像合成

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摘要

Recently, Generative Adversarial Network(GAN) has been the most mainstream technology in the task of Text to Image. However, the vanilla deep neural networks tend to approximate continuous mappings in real generation tasks rather than discontinuous mappings with discrete points. When training on datasets with multiple types, GAN fails to synthesize diverse images, which we call as mode collapse. To deal with it, we propose the Multi-generator Text Conditioned Generative Adversarial Network (MTC-GAN) in this paper. Textual description of real images is embedded on the noise vector as a constraint. Based on Deep Convolutional Generative Adversarial Networks(DCGAN), multiple generators are incorporated to capture high probability among the target distribution. To identify the generated fake sample from a particular generator, the discriminator must enforce multiple generators to have different identifiable modes. The method based on global constraints can make the generated images more diverse. Multiple generators can improve the particular functional shape of the discriminators indirectly, which should make the GAN more stable when trained in high dimensional spaces. The experimental results on the standard dataset demonstrate the good performance of the proposed method. The problem of mode collapse can be improved, and the generated samples can be more diverse.
机译:最近,生成的对抗性网络(GaN)是文本任务的主流技术。然而,Vanilla深度神经网络倾向于在实际生成任务中近似连续映射,而不是具有离散点的不连续映射。当在具有多种类型的数据集上培训时,GaN无法合成不同的图像,我们称为模式崩溃。要处理它,我们提出了本文的多发电机文本调节生成的对抗网络(MTC-GAN)。真实图像的文本描述嵌入在噪声向量上作为约束。基于深度卷积生成的对抗网络(DCGAN),并入多个发电机以捕获目标分布之间的高概率。要从特定生成器识别生成的虚假样本,鉴别器必须强制执行多个生成器以具有不同的可识别模式。基于全局约束的方法可以使生成的图像更加多样化。多个发电机可以间接地改善鉴别器的特定功能形状,这应该使GaN在高维空间训练时更稳定。标准数据集的实验结果表明了该方法的良好性能。模式崩溃的问题可以提高,所生成的样本可以更多样化。

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