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Exploring the Properties of Points Generation Network

机译:探索积分生成网络的性质

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With the development of deep learning, learning-based 3D reconstruction has attracted a substantial amount of attention and various single-image 3D reconstruction networks have been proposed. However, due to self-occlusion, the information captured in a single image is highly limited, resulting in inaccuracy and instability in reconstruction results. In this paper, a feature combination module is proposed to enable existing single-image 3D reconstruction networks to perform 3D reconstruction from multiview images. In addition, we study the impact of the number of the input multiview images as well as the network output points on reconstruction quality, in order to determine the required number of the input multiview images and the output points for reasonable reconstruction. In experiment, point cloud generations with different number of input images and output points are conducted. Experimental results show that the Chamfer distance decreases by 20%∼30% with the optimal number of input multiview images of five and at least 1000 output points.
机译:随着深度学习的发展,基于学习的3D重建引起了极大的关注,并且提出了各种单图像3D重建网络。然而,由于自我遮挡,单个图像中捕获的信息受到极大限制,从而导致重建结果的准确性和不稳定性。在本文中,提出了一种特征组合模块,以使现有的单图像3D重建网络能够从多视图图像执行3D重建。此外,我们研究了输入多视图图像的数量以及网络输出点对重建质量的影响,以确定合理数量的输入多视图图像和输出点的数量。在实验中,进行了具有不同数量的输入图像和输出点的点云生成。实验结果表明,最佳的输入多视图图像数量为五个且至少有1000个输出点时,倒角距离减小了20%〜30%。

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