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Scribbles for Metric Learning in Histological Image Segmentation

机译:组织学图像分割中的度量学习术语

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Segmentation is a fundamental process in biomedical image analysis that enables various types of analysis. Segmenting organs in histological microscopy images is problematic because the boundaries between regions are ambiguous, the images have various appearances, and the amount of training data is limited. To address these difficulties, supervised learning methods (e.g., convolutional neural networking (CNN)) are insufficient to predict regions accurately because they usually require a large amount of training data to learn the various appearances. In this paper, we propose a semi-automatic segmentation method that effectively uses scribble annotations for metric learning. Deep discriminative metric learning re-trains the representation of the feature space so that the distances between the samples with the same class labels are reduced, while those between ones with different class labels are enlarged. It makes pixel classification easy. Evaluation of the proposed method in a heart region segmentation task demonstrated that it performed better than three other methods.
机译:分割是生物医学图像分析的基本过程,其能够实现各种类型的分析。组织学显微镜图像中的分段器官是有问题的,因为区域之间的边界是模糊的,图像具有各种外观,并且训练数据的量受到限制。为了解决这些困难,监督学习方法(例如,卷积神经网络(CNN))不足以准确地预测区域,因为它们通常需要大量的训练数据来学习各种外观。在本文中,我们提出了一种半自动分段方法,有效地使用涂鸦注释进行度量学习。深度鉴别度量学习重新列举特征空间的表示,使得具有相同类标签之间的样本之间的距离减少,而具有不同类标签的那些被放大。它使像素分类简单。在心脏区分割任务中评估所提出的方法,表明它比其他三种方法更好。

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