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Spcr: semi-supervised point cloud instance segmentation with perturbation consistency regularization

机译:SPCR:半监控点云实例分割与扰动一致性正则化

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Point cloud instance segmentation is steadily improving with the development of deep learning. However, current progress is hindered by the expensive cost of collecting dense point cloud labels. To this end, we propose the first semi-supervised point cloud instance segmentation architecture, which is called semi-supervised point cloud instance segmentation with perturbation consistency regularization (SPCR). It is capable to alleviate the data-hungry bottleneck of existing strongly supervised methods. Specifically, SPCR enforces an invariance of the predictions over different perturbations applied to the input point clouds. We firstly introduce various perturbation schemes on inputs to force the network to be robust and easily generalized to the unseen and unlabeled data. Further, perturbation consistency regularization is then conducted on predicted instance masks from various transformed inputs to provide self-supervision for network learning. Extensive experiments on the challenging ScanNet v2 dataset demonstrate our method can achieve competitive performance compared with the state-of-the-art of fully supervised methods.
机译:点云实例分割随着深度学习的发展稳步提高。然而,通过收集密集点云标签的昂贵成本阻碍了当前进度。为此,我们提出了第一个半监控点云实例分段架构,该架构被称为具有扰动一致性正则化(SPCR)的半监控点云实例分段。它能够缓解现有强烈监督方法的数据饥饿的瓶颈。具体而言,SPCR强制对应用于输入点云的不同扰动的预测的不变性。我们首先在输入的输入上介绍了各种扰动方案,以强制网络是强大的,并且容易地推广到看不见的数据和未标记的数据。此外,从各种转换输入的预测实例掩码上进行扰动一致性正则化,以为网络学习提供自我监督。对挑战队的攻击v2数据集进行了广泛的实验,证明了我们的方法可以实现竞争性能,与最先进的完全监督方法相比。

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