Decoupled Semantic Prototypes enable learning from diverse annotation types for semi-weakly segmentation in expert-driven domains

Simon Reiß, Constantin Seibold, Alexander Freytag, E. Rodner, R. Stiefelhagen
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引用次数: 1

Abstract

A vast amount of images and pixel-wise annotations allowed our community to build scalable segmentation solutions for natural domains. However, the transfer to expert-driven domains like microscopy applications or medical healthcare remains difficult as domain experts are a critical factor due to their limited availability for providing pixel-wise annotations. To enable affordable segmentation solutions for such domains, we need training strategies which can simultaneously handle diverse annotation types and are not bound to costly pixel-wise annotations. In this work, we analyze existing training algorithms towards their flexibility for different annotation types and scalability to small annotation regimes. We conduct an extensive evaluation in the challenging domain of organelle segmentation and find that existing semi- and semi-weakly supervised training algorithms are not able to fully exploit diverse annotation types. Driven by our findings, we introduce Decoupled Semantic Prototypes (DSP) as a training method for semantic segmentation which enables learning from annotation types as diverse as image-level-, point-, bounding box-, and pixel-wise annotations and which leads to remarkable accuracy gains over existing solutions for semi-weakly segmentation.
解耦语义原型可以从不同的注释类型中学习,在专家驱动的领域中进行半弱分割
大量的图像和像素注释使我们的社区能够为自然域构建可扩展的分割解决方案。然而,转移到专家驱动的领域(如显微镜应用或医疗保健)仍然很困难,因为领域专家是一个关键因素,因为他们提供像素级注释的可用性有限。为了在这些领域实现经济实惠的分割解决方案,我们需要训练策略,它可以同时处理不同的注释类型,并且不受昂贵的像素级注释的约束。在这项工作中,我们分析了现有的训练算法对不同标注类型的灵活性和对小型标注体系的可扩展性。我们对具有挑战性的细胞器分割领域进行了广泛的评估,发现现有的半和半弱监督训练算法无法充分利用各种注释类型。根据我们的研究结果,我们引入了解耦语义原型(DSP)作为语义分割的训练方法,它可以从不同的注释类型中学习,如图像级、点级、边界框和像素级注释,并且与现有的半弱分割解决方案相比,它可以显著提高精度。
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