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An Extended Type Cell Detection and Counting Method based on FCN

机译:基于FCN的扩展型小区检测与计数方法

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Cell detection and counting are critical and essential tasks for many biological and clinical studies. Traditionally, these tasks are usually performed by visual inspection, which is time consuming and prone to induce subjective bias. These make automatic cell counting and detection essential for large- scale and objective studies. Unfortunately, the hard examples such as cell blur, clutter, bleed-through and imaging noise make these tasks extremely challenging. Over the last few years, automatic cell detection and counting have evolved from earlier methods that are often based on filters to the current state-of- the-art deep learning methods. In this paper, we propose a novel efficient method for robust counting and detection task based on fully convolution networks (FCN). Our method is able to handle most of detection and counting problems from different kinds of cell datasets, and can cover most senior microscopy images, such as bright field, pathology stained material and electron. Extensive experiments on the public and private datasets demonstrate the effectiveness and reliability of our approach.
机译:细胞检测和计数是许多生物学和临床研究的关键和必不可少的任务。传统上,这些任务通常是通过目视检查执行的,这很耗时并且容易引起主观偏见。这些使自动细胞计数和检测对于大规模和客观的研究至关重要。不幸的是,像细胞模糊,杂乱无章,渗漏和成像噪声之类的棘手例子使这些任务极具挑战性。在过去的几年中,自动细胞检测和计数已从通常基于过滤器的早期方法发展到当前最先进的深度学习方法。在本文中,我们提出了一种基于完全卷积网络(FCN)的有效的鲁棒计数和检测任务有效方法。我们的方法能够处理来自不同种类细胞数据集的大多数检测和计数问题,并且能够涵盖大多数高级显微镜图像,例如明场,病理染色材料和电子。在公共和私有数据集上进行的大量实验证明了我们方法的有效性和可靠性。

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