用于图像和点云非配对修复的无监督退化表征学习。

Longguang Wang, Yulan Guo, Yingqian Wang, Xiaoyu Dong, Qingyu Xu, Jungang Yang, Wei An
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引用次数: 0

摘要

低级视觉中的还原任务旨在从低质量(LQ)观测数据中还原高质量(HQ)数据。为了规避在真实场景中获取配对数据的困难,旨在仅通过非配对数据来恢复高质量数据的非配对方法正引起越来越多的关注。由于恢复任务与降解模型紧密相关,真实场景中未知且高度多样化的降解使得从非配对数据中学习具有相当大的挑战性。在本文中,我们提出了一种退化表示学习方案来应对这一挑战。通过学习区分表征空间中的各种退化,我们的退化表征可以在无监督的情况下提取隐含的退化信息。此外,为了处理各种降解,我们开发了降解感知(DA)卷积,可灵活适应各种降解,以充分利用所学表征中的降解信息。基于我们的退化表征和 DA 卷积,我们为无配对修复任务引入了一个通用框架。基于我们的框架,我们提出了 UnIRnet 和 UnPRnet,分别用于无配对图像和点云修复任务。实验证明,我们的降解表征学习方案可以提取鉴别性表征,从而获得准确的降解信息。无配对图像和点云修复任务的实验表明,我们的 UnIRnet 和 UnPRnet 达到了最先进的性能。
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Unsupervised Degradation Representation Learning for Unpaired Restoration of Images and Point Clouds.

Restoration tasks in low-level vision aim to restore high-quality (HQ) data from their low-quality (LQ) observations. To circumvents the difficulty of acquiring paired data in real scenarios, unpaired approaches that aim to restore HQ data solely on unpaired data are drawing increasing interest. Since restoration tasks are tightly coupled with the degradation model, unknown and highly diverse degradations in real scenarios make learning from unpaired data quite challenging. In this paper, we propose a degradation representation learning scheme to address this challenge. By learning to distinguish various degradations in the representation space, our degradation representations can extract implicit degradation information in an unsupervised manner. Moreover, to handle diverse degradations, we develop degradation-aware (DA) convolutions with flexible adaption to various degradations to fully exploit the degrdation information in the learned representations. Based on our degradation representations and DA convolutions, we introduce a generic framework for unpaired restoration tasks. Based on our framework, we propose UnIRnet and UnPRnet for unpaired image and point cloud restoration tasks, respectively. It is demonstrated that our degradation representation learning scheme can extract discriminative representations to obtain accurate degradation information. Experiments on unpaired image and point cloud restoration tasks show that our UnIRnet and UnPRnet achieve state-of-the-art performance.

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