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Attention-GAN for Object Transfiguration in Wild Images

机译:用于野生图像中的对象变形的Attention-GAN

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This paper studies the object transfiguration problem in wild images. The generative network in classical GANs for object transfiguration often undertakes a dual responsibility: to detect the objects of interests and to convert the object from source domain to another domain. In contrast, we decompose the generative network into two separated networks, each of which is only dedicated to one particular sub-task. The attention network predicts spatial attention maps of images, and the transformation network focuses on translating objects. Attention maps produced by attention network are encouraged to be sparse, so that major attention can be paid on objects of interests. No matter before or after object transfiguration, attention maps should remain constant. In addition, learning attention network can receive more instructions, given the available segmentation annotations of images. Experimental results demonstrate the necessity of investigating attention in object transfiguration, and that the proposed algorithm can learn accurate attention to improve quality of generated images.
机译:本文研究了野生图像中的物体变形问题。传统GAN中用于对象变形的生成网络通常承担双重责任:检测感兴趣的对象并将对象从源域转换为另一个域。相反,我们将生成网络分解为两个独立的网络,每个网络仅专用于一个特定的子任务。注意网络预测图像的空间注意图,而转换网络则专注于翻译对象。鼓励注意网络生成的注意图是稀疏的,以便可以将主要注意力放在感兴趣的对象上。无论物体变形之前或之后,注意力图都应保持恒定。另外,给定可用的图像分割注释,学习注意力网络可以接收更多指令。实验结果证明了研究对象变形中注意力的必要性,并且该算法可以学习准确的注意力以提高生成图像的质量。

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