论文标题
持续学习面部属性合成
Continuous learning of face attribute synthesis
论文作者
论文摘要
生成对抗网络(GAN)在面部属性综合任务中表现出极大的优势。但是,现有方法对新属性的扩展影响非常有限。为了克服新属性合成中单个网络的局限性,在这项工作中提出了一种用于面部属性综合的连续学习方法。首先,提取输入图像的特征向量,并在特征空间中执行属性方向回归,以获得不同属性的轴。然后将特征向量沿轴线线性引导,以便可以由解码器合成具有目标属性的图像。最后,为了使网络能够连续学习,正交方向修改模块用于扩展新添加的属性。实验结果表明,所提出的方法可以赋予单个网络具有连续学习属性的能力,并且与当前最新方法所产生的属性相比,合成属性具有更高的精度。
The generative adversarial network (GAN) exhibits great superiority in the face attribute synthesis task. However, existing methods have very limited effects on the expansion of new attributes. To overcome the limitations of a single network in new attribute synthesis, a continuous learning method for face attribute synthesis is proposed in this work. First, the feature vector of the input image is extracted and attribute direction regression is performed in the feature space to obtain the axes of different attributes. The feature vector is then linearly guided along the axis so that images with target attributes can be synthesized by the decoder. Finally, to make the network capable of continuous learning, the orthogonal direction modification module is used to extend the newly-added attributes. Experimental results show that the proposed method can endow a single network with the ability to learn attributes continuously, and, as compared to those produced by the current state-of-the-art methods, the synthetic attributes have higher accuracy.