基于标记控制分水岭分割和后处理的红血病筛查

Pooja Lepcha, W. Srisukkham, Li Zhang, Md. Alamgir Hossain
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引用次数: 2

摘要

由于血细胞的复杂性和性质,细胞分割是一个具有挑战性的问题。传统的细胞计数方法速度慢,容易出错,而且经常受到操作人员的影响。本文旨在对血液显微图像中显示的红细胞(rbc)进行自动分割和计数,以确定被检查者的状况。我们还旨在通过精确地观察重叠细胞的计数来提高分割的准确性,这是许多研究人员面临的最传统的挑战性任务。本文采用标记控制分水岭分割与形态学操作相结合的方法对红细胞进行分割。用人工计数法对算法结果进行了验证,符合率达93.13%。未来的工作将涉及更复杂的重叠细胞的分割和基于智能手机的实时疾病筛查系统的开发。
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Red Blood based disease screening using marker controlled watershed segmentation and post-processing
Cell segmentation is a challenging problem due to the complexity and nature of the blood cells. Traditional methods of counting the cells are slow, error prone and often influenced by the performance of the operator. This paper aims to segment and count Red Blood Cells (RBCs) automatically shown in microscopic blood images to determine the condition of the person under examination. We also aim to increase the accuracy of segmentation by precisely looking into the counting of the overlapped cells which is the most conventional challenging task faced by many researchers. The RBCs in this paper are segmented using the integration of marker controlled watershed segmentation with morphological operations. The result of the proposed algorithm was validated with the manual counting method, and a good conformity of about 93.13 % was obtained. The future work will involve segmentation of more complex overlapping cells and the development of Smartphone based realtime disease screening system.
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