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Novel View Synthesis on Unpaired Data by Conditional Deformable Variational Auto-Encoder

机译:通过条件可变形变形式自动编码器进行小说视图合成未配对数据

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Novel view synthesis often needs the paired data from both the source and target views. This paper proposes a view translation model under cVAE-GAN framework without requiring the paired data. We design a conditional deformable module (CDM) which uses the view condition vectors as the filters to convolve the feature maps of the main branch in VAE. It generates several pairs of displacement maps to deform the features, like the 2D optical flows. The results are fed into the deformed feature based normalization module (DFNM), which scales and offsets the main branch feature, given its deformed one as the input from the side branch. Taking the advantage of the CDM and DFNM, the encoder outputs a view-irrelevant posterior, while the decoder takes the code drawn from it to synthesize the reconstructed and the view-translated images. To further ensure the disentanglement between the views and other factors, we add adversarial training on the code. The results and ablation studies on MultiPIE and 3D chair datasets validate the effectiveness of the framework in cVAE and the designed module.
机译:新型视图综合通常需要来自源和目标视图的配对数据。本文提出了CVAe-GaN框架下的视图翻译模型,而无需配对数据。我们设计一个条件可变形模块(CDM),它使用视图条件向量作为滤波器来卷曲VAE中主分支的特征映射。它生成几对位移贴图,以使特征变形,如2D光学流。将结果馈入到基于变形的特征的归一化模块(DFNM)中,该模块(DFNM)将其缩放并偏离主分支特征,使其变形为侧分支的输入。采用CDM和DFNM的优势,编码器输出视图后续后,而解码器从中汲取的代码以合成重建和视图翻译的图像。为了进一步确保观点和其他因素之间的解剖,我们为该代码添加了对抗性培训。 Mulipie和3D椅子数据集的结果和消融研究验证了CVAE和设计模块框架的有效性。

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