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DeepHuman: 3D Human Reconstruction From a Single Image

机译:Deephuman:3D唯一形象的人性重建

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We propose DeepHuman, an image-guided volume-to-volume translation CNN for 3D human reconstruction from a single RGB image. To reduce the ambiguities associated with the reconstruction of invisible areas, our method leverages a dense semantic representation generated from SMPL model as an additional input. One key feature of our network is that it fuses different scales of image features into the 3D space through volumetric feature transformation, which helps to recover accurate surface geometry. The surface details are further refined through a normal refinement network, which can be concatenated with the volume generation network using our proposed volumetric normal projection layer. We also contribute THuman, a 3D real-world human model dataset containing approximately 7000 models. The network is trained using training data generated from the dataset. Overall, due to the specific design of our network and the diversity in our dataset, our method enables 3D human model estimation given only a single image and outperforms state-of-the-art approaches.
机译:我们提出Deephuman,从单个RGB图像中提出了一种用于3D人体重建的图像导向音量转换CNN。为了减少与无形区域的重建相关的歧义,我们的方法利用了从SMPL模型产生的密集语义表示作为额外的输入。我们网络的一个关键特征是,通过体积的特征转换,它将不同的图像特征稳定在3D空间中,这有助于恢复精确的表面几何形状。表面细节通过正常的细化网络进一步改进,其可以使用所提出的体积正常投影层与卷产生网络连接。我们还为Thuman提供贡献,一个包含大约7000个型号的3D现实世界人类模型数据集。使用从数据集生成的培训数据训练网络。总体而言,由于我们的网络特定设计和我们数据集的多样性,我们的方法使得3D人体模型估计仅给出单个图像并且优于最先进的方法。

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