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Deep Learning based Segmentation Pipeline for Label-Free Phase-Contrast Microscopy Images

机译:基于深度学习的无标记相位对比显微镜图像的分段管线

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The segmentation of cells is necessary for biologists in the morphological statistics for quantitative and qualitative analysis in Phase-contrast Microscopy (PCM) images. In this paper, we address the cell segmentation problem in PCM images. Deep Neural Networks (DNNs) commonly is initialized with weights from a network pre-trained on a large annotated data set like ImageNet have superior performance than those trained from scratch on a small dataset. Here, we demonstrate how encoder-decoder type architectures such as U-Net and Feature Pyramid Network (FPN) can be improved by an alternative encoder which pre-trained on the ImageNet dataset. In particular, our experimental results confirm that the image descriptors from ResNet-18 are highly effective in accurate prediction of the cell boundary and have higher Intersection over Union (IoU) in comparison to the classical U-Net and require fewer training epochs.
机译:细胞的分割是在相逆显微镜(PCM)图像中定量和定性分析的形态学统计中的生物学家所必需的。在本文中,我们在PCM图像中解决了细胞分段问题。深度神经网络(DNN)通常用来自预注释的数据设置的网络的权重初始化,如想象成的大量性能优于从小数据集的划痕培训的那些。在这里,我们演示了如何通过在想象集数据集上预先训练的替代编码器来改进诸如U-Net和特征金字塔网络(FPN)的编码器 - 解码器类型架构。特别是,我们的实验结果证实,Reset-18的图像描述符在细胞边界的精确预测中非常有效,并且与经典U-Net相比,联盟(iou)交叉口较高,并且需要更少的训练时期。

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