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Multi-scale Cell Instance Segmentation with Keypoint Graph Based Bounding Boxes

机译:基于Keypoint图的边界框的多尺度单元实例分段

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Most existing methods handle cell instance segmentation problems directly without relying on additional detection boxes. These methods generally fails to separate touching cells due to the lack of global understanding of the objects. In contrast, box-based instance segmentation solves this problem by combining object detection with segmentation. However, existing methods typically utilize anchor box-based detectors, which would lead to inferior instance segmentation performance due to the class imbalance issue. In this paper, we propose a new box-based cell instance segmentation method. In particular, we first detect the five pre-defined points of a cell via keypoints detection. Then we group these points according to a keypoint graph and subsequently extract the bounding box for each cell. Finally, cell segmentation is performed on feature maps within the bounding boxes. We validate our method on two cell datasets with distinct object shapes, and empirically demonstrate the superiority of our method compared to other instance segmentation techniques. Code is available at: https://github.com/yijingru/KG_ Instance_Segmentation.
机译:大多数现有方法在不依赖于其他检测框的情况下直接处理单元实例分段问题。由于缺乏对对象的全局了解,这些方法通常无法分离触摸单元。相比之下,基于盒的实例分割通过将对象检测与分割组合来解决此问题。然而,现有方法通常利用基于锚盒的检测器,这将导致由于类别不平衡问题而导致的实例分段性能。在本文中,我们提出了一种新的基于盒的单元实例分段方法。特别地,我们首先通过关键点检测检测小区的五个预定义点。然后我们根据关键点图对这些点进行分组,然后提取每个小区的边界框。最后,在边界框内的特征映射上执行单元分割。我们在具有不同对象形状的两个小区数据集上验证我们的方法,并经验证明了与其他实例分段技术相比的方法的优势。代码可用于:https://github.com/yijingru/kg_ instance_segunation。

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