新颖视点合成的视点独立生成对抗网络

Xiaogang Xu, Ying-Cong Chen, Jiaya Jia
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引用次数: 34

摘要

从2D图像合成新视图需要推断3D结构,并从新的视点将其投影回2D。在本文中,我们提出了一个基于编码器-解码器的生成对抗网络VI-GAN来解决这个问题。我们的方法是让网络在不同的视图中看到属于同一类别的物体的许多图像后,获得物体内在属性的本质知识。为此,设计了一种编码器,用于提取与视图无关的特征,这些特征表征了输入图像的内在属性,包括3D结构、颜色、纹理等。我们还使解码器根据提取的特征和任意用户特定的相机姿势产生新视图的图像。大量实验表明,该模型可以在不同视角下合成高质量的连续相机姿态图像,适用于各种应用。
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View Independent Generative Adversarial Network for Novel View Synthesis
Synthesizing novel views from a 2D image requires to infer 3D structure and project it back to 2D from a new viewpoint. In this paper, we propose an encoder-decoder based generative adversarial network VI-GAN to tackle this problem. Our method is to let the network, after seeing many images of objects belonging to the same category in different views, obtain essential knowledge of intrinsic properties of the objects. To this end, an encoder is designed to extract view-independent feature that characterizes intrinsic properties of the input image, which includes 3D structure, color, texture etc. We also make the decoder hallucinate the image of a novel view based on the extracted feature and an arbitrary user-specific camera pose. Extensive experiments demonstrate that our model can synthesize high-quality images in different views with continuous camera poses, and is general for various applications.
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