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Swarm Optimization and Multi-level Thresholding of Cytological Images for Breast Cancer Diagnosis

机译:乳腺癌诊断细胞学图像的群优化和多级别阈值

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This paper presents a novel approach for multi-level thresholding of cytologic images. Typically, thresholding is applied in order to segment the image into regions of interest or objects, each having a high level of homogeneity in some parameter such as luminance. Homogeneous regions are then used to generate a set of features discriminating categories occurring in a given diagnostic problem. Instead of homogeneity measure, our approach uses a classifier to evaluate the quality of segmentation solution directly. The candidate solutions (sets of threshold values) are generated with use of the stochastic swarm intelligence-based metaheuristics. Experimental results demonstrate the promising performance of the proposed classification-driven segmentation in application to breast cancer diagnostics.
机译:本文提出了一种新的细胞学图像多级阈值的新方法。通常,施加阈值处理以便将图像分段为感兴趣区域或物体区域,每个区域具有高水平的均匀性,例如亮度。然后使用均匀区域生成一组特征,判别在给定的诊断问题中发生的类别。我们的方法使用分类器直接评估分段解决方案的质量来代替同质度量。使用随机群智能的核心学生成候选解决方案(阈值集)。实验结果表明,拟议的分类驱动分段在乳腺癌诊断中提出的分类驱动分段的有希望的性能。

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