An Effective Nuclear Extraction Mask Method for SVM Classification

Qinghua Li, Hailong Ma, Zhao Zhang, Chao Feng
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Abstract

With the development of medical technology, the automatic cell analysis system plays an important role in medical diagnosis and medical image processing. The kernel recognition theory and technology based on support vector machine (SVM) classifier are mainly optimized from the perspective of the kernel segmentation algorithm to improve the recognition accuracy of the SVM classifier. Unfortunately, the nuclear overlap treatment can not accurately separate the nuclear gelling impurities in the dyeing process, resulting in the low classification accuracy of SVM. To solve the above image segmentation problems in the process of nuclear imaging processing, an effective nuclear extraction method based on the mask method for the SVM classifier is proposed. Compared with related work, the proposed method enables one to achieve a higher accuracy of SVM cross-validation.
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一种有效的SVM分类核提取掩码方法
随着医学技术的发展,细胞自动分析系统在医学诊断和医学图像处理中发挥着越来越重要的作用。主要从核分割算法的角度对基于支持向量机(SVM)分类器的核识别理论和技术进行优化,以提高支持向量机分类器的识别精度。遗憾的是,核重叠处理不能准确分离染色过程中的核胶凝杂质,导致SVM的分类精度较低。为了解决上述核成像处理过程中的图像分割问题,提出了一种有效的基于掩码方法的SVM分类器核提取方法。与相关工作相比,本文提出的方法能够实现更高的SVM交叉验证精度。
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