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Learning to Segment Microscopy Images with Lazy Labels

机译:学习用懒惰标签进行分段显微镜图像

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The need for labour intensive pixel-wise annotation is a major limitation of many fully supervised learning methods for segmenting bioimages that can contain numerous object instances with thin separations. In this paper, we introduce a deep convolutional neural network for microscopy image segmentation. Annotation issues are circumvented by letting the network being trainable on coarse labels combined with only a very small number of images with pixel-wise annotations. We call this new labelling strategy 'lazy' labels. Image segmentation is stratified into three connected tasks: rough inner region detection, object separation and pixel-wise segmentation. These tasks are learned in an end-to-end multi-task learning framework. The method is demonstrated on two microscopy datasets, where we show that the model gives accurate segmentation results even if exact, boundary labels are missing for a majority of annotated data. It brings more flexibility and efficiency for training deep neural networks that are data hungry and is applicable to biomedical images with poor contrast at the object boundaries or with diverse textures and repeated patterns.
机译:劳动密集型像素明智注释的需求是许多完全监督的分割生物贴图的大量全面监督学习方法的一个主要限制,该方法可以包含具有细分的众多对象实例。在本文中,我们引入了一种用于显微镜图像分割的深度卷积神经网络。通过让网络在粗略标签上可在粗略标签上进行衡量来规避注释问题,仅与具有像素明智的注释的非常少量的图像相结合。我们称之为新的标签策略“懒惰”标签。图像分割分层为三个连接任务:粗糙的内部区域检测,对象分离和像素方向分割。这些任务是在端到端的多任务学习框架中学到的。该方法在两个显微镜数据集上进行说明,在那里我们表明该模型即使准确地为大多数注释数据丢失了准确的分割结果,即使是精确的,边界标签也缺失。它为培训具有饥饿的深度神经网络带来了更多的灵活性和效率,并且适用于对象边界或多种纹理和重复模式的生物医学图像。

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