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GENERATIVE ADVERSARIAL NETWORKS FOR SINGLE PHOTO 3D RECONSTRUCTION

机译:单一照片3D重建的生成式对抗网络

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摘要

Fast but precise 3D reconstructions of cultural heritage scenes are becoming very requested in the archaeology and architecture. While modern multi-image 3D reconstruction approaches provide impressive results in terms of textured surface models, it is often the need to create a 3D model for which only a single photo (or few sparse) is available. This paper focuses on the single photo 3D reconstruction problem for lost cultural objects for which only a few images are remaining. We use image-to-voxel translation network (Z-GAN) as a starting point. Z-GAN network utilizes the skip connections in the generator network to transfer 2D features to a 3D voxel model effectively (Figure 1). Therefore, the network can generate voxel models of previously unseen objects using object silhouettes present on the input image and the knowledge obtained during a training stage. In order to train our Z-GAN network, we created a large dataset that includes aligned sets of images and corresponding voxel models of an ancient Greek temple. We evaluated the Z-GAN network for single photo reconstruction on complex structures like temples as well as on lost heritage still available in crowdsourced images. Comparison of the reconstruction results with state-of-the-art methods are also presented and commented.
机译:在考古学和建筑学中,对文化遗产场景的快速而精确的3D重建要求非常高。尽管现代的多图像3D重建方法在带纹理的表面模型方面提供了令人印象深刻的结果,但通常需要创建仅可使用一张照片(或稀疏稀疏)的3D模型。本文着重研究丢失的文化对象的单张照片3D重建问题,仅保留少量图像。我们使用图像到体素转换网络(Z-GAN)作为起点。 Z-GAN网络利用生成器网络中的跳过连接将2D特征有效地转换为3D体素模型(图1)。因此,网络可以使用输入图像上存在的对象轮廓和在训练阶段获得的知识来生成先前未见过的对象的体素模型。为了训练我们的Z-GAN网络,我们创建了一个大型数据集,其中包括对齐的图像集和古希腊神庙的相应体素模型。我们评估了Z-GAN网络,用于在寺庙等复杂结构上以及在众包图像中仍然可用的遗失遗产上进行单张照片重建。还介绍和评论了重建结果与最新方法的比较。

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