多视点立体:一种新的半监督式多视点立体学习方法

Taekyung Kim, Jaehoon Choi, Seokeon Choi, Dongki Jung, Changick Kim
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引用次数: 3

摘要

虽然基于学习的多视图立体(MVS)方法最近在质量和效率方面取得了成功,但有限的MVS数据阻碍了对未知环境的推广。一种简单的解决方案是生成各种大规模的MVS数据集,但生成密集的三维结构地面真值需要大量的时间和资源。另一方面,如果放松对密集地面真值的依赖,则MVS系统将更顺利地推广到新环境。为此,我们首先引入了一种新的半监督多视图立体框架,称为基于稀疏地面真值的MVS网络(SGT-MVSNet),即使只有几个地面真值3D点,也可以可靠地重建3D结构。我们的策略是划分准确和错误的区域,并根据我们的观察分别征服它们,概率图可以将这些区域分开。我们提出了一种称为3D点一致性损失的自我监督损失来增强3D重建性能,它迫使通过预测深度值从相应像素反向投影的3D点在相同的3D坐标处相遇。最后,我们通过粗到细的可靠深度传播模块向边缘和遮挡传播这些改进的深度预测。我们生成了用于评估的DTU数据集的备用地面真值,并且大量的实验验证了我们的SGT-MVSNet在稀疏地面真值设置上优于最先进的MVS方法。此外,尽管我们只使用了数十个或数百个地面真实三维点,但我们的方法显示出与监督MVS方法相当的重建结果。
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Just a Few Points are All You Need for Multi-view Stereo: A Novel Semi-supervised Learning Method for Multi-view Stereo
While learning-based multi-view stereo (MVS) methods have recently shown successful performances in quality and efficiency, limited MVS data hampers generalization to unseen environments. A simple solution is to generate various large-scale MVS datasets, but generating dense ground truth for 3D structure requires a huge amount of time and resources. On the other hand, if the reliance on dense ground truth is relaxed, MVS systems will generalize more smoothly to new environments. To this end, we first introduce a novel semi-supervised multi-view stereo framework called a Sparse Ground truth-based MVS Network (SGT-MVSNet) that can reliably reconstruct the 3D structures even with a few ground truth 3D points. Our strategy is to divide the accurate and erroneous regions and individually conquer them based on our observation that a probability map can separate these regions. We propose a self-supervision loss called the 3D Point Consistency Loss to enhance the 3D reconstruction performance, which forces the 3D points back-projected from the corresponding pixels by the predicted depth values to meet at the same 3D co-ordinates. Finally, we propagate these improved depth pre-dictions toward edges and occlusions by the Coarse-to-fine Reliable Depth Propagation module. We generate the spare ground truth of the DTU dataset for evaluation and extensive experiments verify that our SGT-MVSNet outperforms the state-of-the-art MVS methods on the sparse ground truth setting. Moreover, our method shows comparable reconstruction results to the supervised MVS methods though we only used tens and hundreds of ground truth 3D points.
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