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Inception U-Net Architecture for Semantic Segmentation to Identify Nuclei in Microscopy Cell Images

机译:从Inception U-Net架构进行语义分割,以识别显微镜细胞图像中的核

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With the increasing applications of deep learning in biomedical image analysis, in this article we introduce an inception U-Net architecture for automating nuclei detection in microscopy cell images of varying size and modality to help unlock faster cures, inspired from Kaggle Data Science Bowl Challenge 2018 (KDSB18). This study follows from the fact that most of the analysis requires nuclei detection as the starting phase for getting an insight into the underlying biological process and further diagnosis. The proposed architecture consists of a switch normalization layer, convolution layers, and inception layers (concatenated 1×1, 3×3, and 5×5 convolution and the hybrid of a max and Hartley spectral pooling layer) connected in the U-Net fashion for generating the image masks. This article also illustrates the model perception of image masks using activation maximization and filter map visualization techniques. A novel objective function segmentation loss is proposed based on the binary cross entropy, dice coefficient, and intersection over union loss functions. The intersection over union score, loss value, and pixel accuracy metrics evaluate the model over the KDSB18 dataset. The proposed inception U-Net architecture exhibits quite significant results as compared to the original U-Net and recent U-Net++ architecture.
机译:随着生物医学图像分析深度学习的越来越多,在本文中,我们介绍了一种用于自动化核检测的核心检测,以在不同尺寸和模态的显微镜细胞图像中自动化核检测,以帮助解锁更快的治疗,这是2018的启发。 (kdsb18)。本研究遵循大多数分析需要核检测作为对潜在生物过程深入了解的起始阶段和进一步诊断的起始阶段。所提出的架构由开关归一化层,卷积层和成立层(连接的1×1,3×3和5×5卷积和5×5卷积以及MAX和Hartley光谱池层的混合)组成,以U净时尚连接用于生成图像掩模。本文还说明了使用激活最大化和滤波图可视化技术的图像掩模的模型感知。基于二进制交叉熵,骰子系数和联盟损失功能的交叉来提出新的客观函数分割损失。联盟评分,损耗值和像素精度度量的交叉点在KDSB18数据集中评估模型。与原始U-Net和最近的U-Net ++架构相比,建议的初始U-Net架构表现出相当重大的结果。

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