Learning via Social Preference: A Coarse-to-Fine Training Strategy for Style Transfer Systems

Zhuoqi Ma, N. Wang, Yi Hao, Jie Li, Xinbo Gao
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Abstract

Neural style transfer represented a paradigm shift in image artistic rendering and applications in digital entertainment. Generative adversarial networks are considered as a general solution for style transfer problems. Researchers have explored multiple learning algorithms to increase the learning ability of style transfer networks. However, such research has overlooked an important outside motivator: social preference. Classical style transfer networks are trained offline and worked as a stationary model to transfer photos into stylized images, without any interaction with the environment. Based on the ideas from online training, we propose a new coarse-to-fine training strategy for neural style transfer systems to adapt to social preference change. In coarse stage, a primary model is learned via normal training method. In fine stage, the model is updated with online learning approach and sequentially added new data. We show that our approach exhibits improved performance compared to stationary model from visual effect and reflection of social preference. We conclude that the coarse-to-fine training strategy can improve the output of the generative model in social media environment.
通过社会偏好学习:风格迁移系统从粗到精的训练策略
神经风格迁移代表了图像艺术呈现和数字娱乐应用的范式转变。生成对抗网络被认为是风格迁移问题的一般解决方案。研究者探索了多种学习算法来提高风格迁移网络的学习能力。然而,这样的研究忽略了一个重要的外部激励因素:社会偏好。经典风格转移网络是离线训练的,并作为固定模型将照片转换为程式化图像,而不与环境进行任何交互。基于在线训练思想,提出了一种适应社会偏好变化的神经风格迁移系统从粗到精的新训练策略。在粗糙阶段,通过常规训练方法学习初级模型。在精细阶段,采用在线学习方法对模型进行更新,并依次添加新数据。从视觉效果和社会偏好的反映来看,我们的方法比固定模型表现出更好的性能。我们得出结论,粗到精的训练策略可以提高生成模型在社交媒体环境下的输出。
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