Learning Multi-Class Segmentations From Single-Class Datasets

Konstantin Dmitriev, A. Kaufman
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引用次数: 38

Abstract

Multi-class segmentation has recently achieved significant performance in natural images and videos. This achievement is due primarily to the public availability of large multi-class datasets. However, there are certain domains, such as biomedical images, where obtaining sufficient multi-class annotations is a laborious and often impossible task and only single-class datasets are available. While existing segmentation research in such domains use private multi-class datasets or focus on single-class segmentations, we propose a unified highly efficient framework for robust simultaneous learning of multi-class segmentations by combining single-class datasets and utilizing a novel way of conditioning a convolutional network for the purpose of segmentation. We demonstrate various ways of incorporating the conditional information, perform an extensive evaluation, and show compelling multi-class segmentation performance on biomedical images, which outperforms current state-of-the-art solutions (up to 2.7%). Unlike current solutions, which are meticulously tailored for particular single-class datasets, we utilize datasets from a variety of sources. Furthermore, we show the applicability of our method also to natural images and evaluate it on the Cityscapes dataset. We further discuss other possible applications of our proposed framework.
从单类数据集学习多类分割
近年来,多类分割在自然图像和视频中取得了显著的效果。这一成就主要归功于大型多类数据集的公开可用性。然而,在某些领域,如生物医学图像,获得足够的多类注释是一项费力且往往不可能完成的任务,并且只有单类数据集可用。虽然这些领域的现有分割研究使用私有多类数据集或专注于单类分割,但我们提出了一个统一的高效框架,通过组合单类数据集并利用一种新的方式来调节卷积网络以实现分割目的,从而实现多类分割的鲁棒同时学习。我们展示了结合条件信息的各种方法,进行了广泛的评估,并在生物医学图像上展示了令人信服的多类别分割性能,优于当前最先进的解决方案(高达2.7%)。与当前的解决方案不同,这些解决方案是为特定的单类数据集精心定制的,我们利用来自各种来源的数据集。此外,我们还展示了我们的方法对自然图像的适用性,并在城市景观数据集上进行了评估。我们进一步讨论了我们提出的框架的其他可能的应用。
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