论文标题
通过美学驱动的增强学习属性可控美丽的白种人的面部生成
Attribute Controllable Beautiful Caucasian Face Generation by Aesthetics Driven Reinforcement Learning
论文作者
论文摘要
近年来,图像产生在提高图像质量方面取得了长足的进步,从而产生了高保真性。同样,最近,还有一些建筑设计,它使甘恩能够毫不客观地学习不同层中表示的语义属性。但是,仍然缺乏与人类美学更一致的面部图像的研究。基于Eigengan [He等,ICCV 2021],我们将增强学习的技术构建到Eigengan的发电机中。该代理商试图弄清楚如何将生成的人面部的语义属性更改为更可取的面部。为此,我们训练了一种可以进行面部美容预测的美学评分模型。我们还可以利用此评分模型来分析面部属性和美学分数之间的相关性。从经验上讲,使用增强学习的现成技术将无法正常工作。因此,相反,我们提出了一种新的变体,该变体纳入了近年来在强化学习社区中出现的成分。与原始生成的图像相比,调整后的图像显示了有关各种属性的明确区别。实验结果使用思维孔显示了提出方法的有效性。更改的面部图像通常更具吸引力,并有明显提高的美学水平。
In recent years, image generation has made great strides in improving the quality of images, producing high-fidelity ones. Also, quite recently, there are architecture designs, which enable GAN to unsupervisedly learn the semantic attributes represented in different layers. However, there is still a lack of research on generating face images more consistent with human aesthetics. Based on EigenGAN [He et al., ICCV 2021], we build the techniques of reinforcement learning into the generator of EigenGAN. The agent tries to figure out how to alter the semantic attributes of the generated human faces towards more preferable ones. To accomplish this, we trained an aesthetics scoring model that can conduct facial beauty prediction. We also can utilize this scoring model to analyze the correlation between face attributes and aesthetics scores. Empirically, using off-the-shelf techniques from reinforcement learning would not work well. So instead, we present a new variant incorporating the ingredients emerging in the reinforcement learning communities in recent years. Compared to the original generated images, the adjusted ones show clear distinctions concerning various attributes. Experimental results using the MindSpore, show the effectiveness of the proposed method. Altered facial images are commonly more attractive, with significantly improved aesthetic levels.