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A Huber-loss-driven clustering technique and its application to robust cell detection in confocal microscopy images

机译:Huber损失驱动的聚类技术及其在共聚焦显微镜图像中的鲁棒细胞检测中的应用

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We address the problem of detecting cells in biological images. The problem is important in many automated image analysis applications. We identify the problem as one of clustering and formulate it within the framework of robust estimation using loss functions. We show how suitable loss functions may be chosen based on a priori knowledge of the noise distribution. Specifically, in the context of biological images, since the measurement noise is not Gaussian, quadratic loss functions yield suboptimal results. We show that by incorporating the Huber loss function, cells can be detected robustly and accurately. To initialize the algorithm, we also propose a seed selection approach. Simulation results show that Huber loss exhibits better performance compared with some standard loss functions. We also provide experimental results on confocal images of yeast cells. The proposed technique exhibits good detection performance even when the signal-to-noise ratio is low.
机译:我们解决了在生物图像中检测细胞的问题。该问题在许多自动图像分析应用程序中很重要。我们将问题识别为聚类之一,并在使用损失函数的稳健估计框架内将其表述出来。我们展示了如何基于噪声分布的先验知识来选择合适的损失函数。具体而言,在生物学图像的情况下,由于测量噪声不是高斯噪声,因此二次损失函数会产生次优的结果。我们表明,通过合并Huber损失函数,可以稳健而准确地检测到细胞。为了初始化算法,我们还提出了一种种子选择方法。仿真结果表明,与某些标准损耗函数相比,Huber损耗表现出更好的性能。我们还提供了共聚焦酵母细胞图像的实验结果。所提出的技术即使在信噪比低的情况下也表现出良好的检测性能。

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