A COMPARATIVE EVALUATION OF DEEP LEARNING METHODS IN DIGITAL IMAGE CLASSIFICATION

Hersh A. Mohammed, S. Kareem, A. Mohammed
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Abstract

White Blood Cells are important in determining a person's overall health. The blood disease diagnosis includes characterization and identification of blood samples of a patient. Neural Networks (NN), Convolutional Neural Networks (CNN), and a mix of CNN and NN models are used in recent techniques to improve visual content understanding. From start to finish, The authors were driven to uncover remarkable characteristics in example photographs because of their expertise in medical image analysis. For blood cell classification, the overall performance of individual cell patches extracted using blood smear techniques has been excellent. These approaches, on the other hand, are incapable of dealing with the issue of multiple cells overlapping. Because of the blood cell overlapping pictures, the input image dimension is compressed, the classification time is reduced, as well as the network works better with more accurate parameter estimates. In this review, we are evaluating a detailed scientific comparison of some of the ways used to improve WBC classification. The authors will show some of the ways used to automatically classify their cells. The results of some of the tests used using available data, compared to blood cell classification techniques.
数字图像分类中深度学习方法的比较评价
白细胞在决定一个人的整体健康状况方面很重要。血液病诊断包括患者血液样本的特征和鉴定。神经网络(NN),卷积神经网络(CNN),以及CNN和NN模型的混合在最近的技术中用于提高视觉内容的理解。从开始到结束,由于他们在医学图像分析方面的专业知识,作者被驱使去揭示示例照片中的显着特征。对于血细胞分类,使用血液涂片技术提取的单个细胞斑块的总体性能非常出色。另一方面,这些方法无法处理多个细胞重叠的问题。由于血细胞图像的重叠,压缩了输入图像的维数,减少了分类时间,并且网络的性能更好,参数估计更准确。在这篇综述中,我们对一些用于改善白细胞分类的方法进行了详细的科学比较。作者将展示一些用于自动分类细胞的方法。与血细胞分类技术相比,一些使用现有数据的测试结果。
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