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首页> 外文期刊>IEEE Transactions on Image Processing >KT-GAN: Knowledge-Transfer Generative Adversarial Network for Text-to-Image Synthesis
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KT-GAN: Knowledge-Transfer Generative Adversarial Network for Text-to-Image Synthesis

机译:KT-GaN:知识转移生成对抗网络,用于文本到图像合成

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摘要

This paper presents a new framework, Knowledge-Transfer Generative Adversarial Network (KT-GAN), for fine-grained text-to-image generation. We introduce two novel mechanisms: an Alternate Attention-Transfer Mechanism (AATM) and a Semantic Distillation Mechanism (SDM), to help generator better bridge the cross-domain gap between text and image. The AATM updates word attention weights and attention weights of image sub-regions alternately, to progressively highlight important word information and enrich details of synthesized images. The SDM uses the image encoder trained in the Image-to-Image task to guide training of the text encoder in the Text-to-Image task, for generating better text features and higher-quality images. With extensive experimental validation on two public datasets, our KT-GAN outperforms the baseline method significantly, and also achieves the competive results over different evaluation metrics.
机译:本文介绍了一个新的框架,知识转移生成的对抗网络(KT-GaN),用于细粒度的文本到图像生成。我们介绍了两种新机制:替代关注转移机制(AATM)和语义蒸馏机制(SDM),帮助发电机更好地桥接文本和图像之间的跨域间隙。 AATM交替地更新图像子区域的文字注意重量和注意重量,以逐步突出重要的单词信息并丰富合成图像的细节。 SDM使用在图像到图像任务中培训的图像编码器来指导文本编码器的培训,以产生更好的文本特征和更高质量的图像。在两个公共数据集中进行了广泛的实验验证,我们的KT-GAN显着优于基线方法,并且还实现了不同评估指标的竞争结果。

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