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Deep Voting: A Robust Approach Toward Nucleus Localization in Microscopy Images

机译:深刻的投票:显微镜图像中核分化的强大方法

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Robust and accurate nuclei localization in microscopy image can provide crucial clues for accurate computer-aid diag In this paper, we propose a convolutional neural network (CNN) based hough voting method to localize nucleus centroids with heavy cluttering and morphologic variations in microscopy images. Our method, which we name as deep voting, mainly consists of two steps. (1) Given an input image, our method assigns each local patch several pairs of voting offset vectors which indicate the positions it votes to, and the corresponding voting confidence (used to weight each votes), our model can be viewed as an implicit hough-voting codebook. (2) We collect the weighted votes from all the testing patches and compute the final voting density map in a way similar to Parzen-window estimation. The final nucleus positions are identified by searching the local maxima of the density map. Our method only requires a few annotation efforts (just one click near the nucleus center). Experiment results on Neuroendocrine Tumor (NET) microscopy images proves the proposed method to be state-of-the-art.
机译:在显微镜图像中稳健和准确的核定位可以为准确的计算机辅助诊断提供关键线索,我们提出了一种基于卷积神经网络(CNN)的霍夫表决方法,以使核心内容的核心成质量局限性,具有沉重的杂乱和形态学变异。我们名称为深层投票的方法主要包括两个步骤。 (1)给定输入图像,我们的方法为每个本地修补程序分配几对投票偏移矢量,指示它投票的位置,以及相应的投票信心(用于重量每个投票),我们的模型可以被视为隐含的霍夫 - 码码本。 (2)我们从所有测试补丁中收集加权投票,并以类似于Parzen-窗口估计的方式计算最终投票密度图。通过搜索密度图的局部最大值来识别最终的核位置。我们的方法只需要一些注释工作(只需一个点击核心中心)。神经内分泌肿瘤(净)显微镜图像的实验结果证明了所提出的方法是最先进的。

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