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Classification of White Blood Cells by Convolution Neural Network in Lens-Free Imaging System

机译:无透镜成像系统中卷积神经网络对白细胞的分类

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Over the past decade, the lens-free imaging technique has been considered a good way to reduce the volume and the cost of cell analysis tools. However, limited by lens-free optical amplification, the cell imaging not only has low resolution but also has diffraction phenomenon in lens-free system. Therefore, there is a major problem, which traditional methods can hardly classify diffracted cell images in the system. At present, the state-of-the-art algorithm in image classification is to use the convolution neural network (CNN). Fortunately, the training of CNN method is fully accordant with the application requirements of classification of white blood cells (WBCs). In this paper, we proposed a technique for WBCs classification based on CNN in the lens-free imaging system. According to the test, the accuracy of this method for WBCs classification can reach to 90%, and it has a very broad application prospect in point-of-care testing.
机译:在过去的十年中,无透镜成像技术被认为是减少细胞分析工具体积和成本的好方法。然而,受无透镜光学放大的限制,细胞成像不仅分辨率低,而且在无透镜系统中也有衍射现象。因此,存在一个主要问题,即传统方法很难对系统中的衍射细胞图像进行分类。目前,图像分类中的最新算法是使用卷积神经网络(CNN)。幸运的是,CNN方法的训练完全符合白细胞(WBC)分类的应用要求。在本文中,我们提出了一种在无透镜成像系统中基于CNN的WBC分类技术。经测试,该方法用于白细胞分类的准确性可达90%,在现场即时检测中具有广阔的应用前景。

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