A denoised Mean Teacher for domain adaptive point cloud registration

Alexander Bigalke, M. Heinrich
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Abstract

Point cloud-based medical registration promises increased computational efficiency, robustness to intensity shifts, and anonymity preservation but is limited by the inefficacy of unsupervised learning with similarity metrics. Supervised training on synthetic deformations is an alternative but, in turn, suffers from the domain gap to the real domain. In this work, we aim to tackle this gap through domain adaptation. Self-training with the Mean Teacher is an established approach to this problem but is impaired by the inherent noise of the pseudo labels from the teacher. As a remedy, we present a denoised teacher-student paradigm for point cloud registration, comprising two complementary denoising strategies. First, we propose to filter pseudo labels based on the Chamfer distances of teacher and student registrations, thus preventing detrimental supervision by the teacher. Second, we make the teacher dynamically synthesize novel training pairs with noise-free labels by warping its moving inputs with the predicted deformations. Evaluation is performed for inhale-to-exhale registration of lung vessel trees on the public PVT dataset under two domain shifts. Our method surpasses the baseline Mean Teacher by 13.5/62.8%, consistently outperforms diverse competitors, and sets a new state-of-the-art accuracy (TRE=2.31mm). Code is available at https://github.com/multimodallearning/denoised_mt_pcd_reg.
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域自适应点云配准的去噪均值教师算法
基于点云的医疗注册有望提高计算效率,对强度变化的鲁棒性和匿名性保持,但受无监督学习与相似度量的无效限制。对合成变形的监督训练是另一种选择,但反过来又受到与真实域的域差距的影响。在这项工作中,我们的目标是通过领域适应来解决这一差距。与“刻薄的老师”一起进行自我训练是解决这个问题的一种既定方法,但受到来自老师的伪标签的固有噪声的影响。作为补救措施,我们提出了一个去噪的师生模式点云配准,包括两个互补的去噪策略。首先,我们建议根据教师和学生注册的Chamfer距离来过滤伪标签,从而防止教师的有害监督。其次,我们通过用预测的变形来扭曲其运动输入,使教师动态地合成具有无噪声标签的新训练对。在两个域移位下,对公共PVT数据集上的肺血管树的吸气到呼气注册进行了评估。我们的方法比基线Mean Teacher高出13.5/62.8%,始终优于各种竞争对手,并设定了新的最先进的精度(TRE=2.31mm)。代码可从https://github.com/multimodallearning/denoised_mt_pcd_reg获得。
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