Instance Consistency Regularization for Semi-Supervised 3D Instance Segmentation.

Yizheng Wu, Zhiyu Pan, Kewei Wang, Xingyi Li, Jiahao Cui, Liwen Xiao, Guosheng Lin, Zhiguo Cao
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Abstract

Large-scale datasets with point-wise semantic and instance labels are crucial to 3D instance segmentation but also expensive. To leverage unlabeled data, previous semi-supervised 3D instance segmentation approaches have explored self-training frameworks, which rely on high-quality pseudo labels for consistency regularization. They intuitively utilize both instance and semantic pseudo labels in a joint learning manner. However, semantic pseudo labels contain numerous noise derived from the imbalanced category distribution and natural confusion of similar but distinct categories, which leads to severe collapses in self-training. Motivated by the observation that 3D instances are non-overlapping and spatially separable, we ask whether we can solely rely on instance consistency regularization for improved semi-supervised segmentation. To this end, we propose a novel self-training network InsTeacher3D to explore and exploit pure instance knowledge from unlabeled data. We first build a parallel base 3D instance segmentation model DKNet, which distinguishes each instance from the others via discriminative instance kernels without reliance on semantic segmentation. Based on DKNet, we further design a novel instance consistency regularization framework to generate and leverage high-quality instance pseudo labels. Experimental results on multiple large-scale datasets show that the InsTeacher3D significantly outperforms prior state-of-the-art semi-supervised approaches.

半监督三维实例分割的实例一致性正则化
带有点式语义和实例标签的大规模数据集对三维实例分割至关重要,但成本也很高。为了利用无标注数据,以前的半监督三维实例分割方法探索了自我训练框架,该框架依赖高质量伪标签进行一致性正则化。它们以联合学习的方式直观地利用实例和语义伪标签。然而,语义伪标签包含大量噪声,这些噪声来自不平衡的类别分布和相似但不同类别的自然混淆,从而导致自我训练的严重崩溃。我们观察到三维实例是不重叠的,并且在空间上是可分离的,受此启发,我们提出了一个问题:我们是否可以仅仅依靠实例一致性正则化来改进半监督分割。为此,我们提出了一种新颖的自我训练网络 InsTeacher3D,以探索和利用来自无标记数据的纯实例知识。我们首先建立了一个并行基础三维实例分割模型 DKNet,该模型通过判别实例核将每个实例与其他实例区分开来,而无需依赖语义分割。在 DKNet 的基础上,我们进一步设计了一个新颖的实例一致性正则化框架,以生成和利用高质量的实例伪标签。在多个大规模数据集上的实验结果表明,InsTeacher3D 的性能明显优于之前最先进的半监督方法。
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