Comparative Analysis of ControlGAN and ControlGAN-GP Models based Text-to-Image Synthesis

Dikshya Surabhi Patra, Subhransu Padhee
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Abstract

This manuscript discuss the concept of Text-to-Image synthesis using machine learning methods. For machine learning purpose gradient adversarial network is used. Two different gradient adversarial network namely ControlGAN and ControlGAN-Gradient penalty method are used for the above mentioned task. The inclusion of Gradient-penalty in ControlGAN improves the convergence of the model which is evident from the performance matrices of the system. Microsoft COCO dataset is used for simulation and result validation purposes.
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基于文本到图像合成的ControlGAN和ControlGAN- gp模型的比较分析
本文讨论了使用机器学习方法的文本到图像合成的概念。对于机器学习目的,使用梯度对抗网络。针对上述任务,采用了两种不同的梯度对抗网络ControlGAN和ControlGAN-梯度惩罚方法。从系统的性能矩阵可以看出,在ControlGAN中加入梯度惩罚提高了模型的收敛性。Microsoft COCO数据集用于模拟和结果验证目的。
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