基于非线性小波变换的去噪方法在精子异常分类中的应用

Hamza Osman Ilhan, I. O. Sigirci, Gorkem Serbes, N. Aydin
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引用次数: 5

摘要

精子形态分析是男性不育诊断的关键步骤之一。目前,由于可视化评估技术易于实现、响应速度快、成本低等特点,主要采用可视化评估技术进行分析。然而,在视觉评估技术中,观察者的专业水平是非常重要的。根据观察者的分析能力,结果可能会有所不同,甚至具有误导性。因此,应消除人为因素,并由客观的计算机化系统进行分析。在本研究中,我们使用基于描述符的特征对正常、异常和非精子斑块进行分类。此外,我们还研究了两种去噪技术对分类性能的影响,因为斑块中存在噪声。结果表明,去噪处理对分类性能有重要影响。此外,基于小波的自适应去噪方法将支持向量机多项式核分类器的性能显著提高到86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effect of Nonlinear Wavelet Transform Based De-noising in Sperm Abnormality Classification
Morphological sperm analysis is one of the crucial steps in the male-based infertility diagnosis. Currently, analyses are mostly performed by visual assessment technique because of its easy implementation, quick response and cheapness properties. However, the expertise level of the observer has great importance in the visual assessment technique. Results can be different and misleading according to the observer analysis capability. Therefore, human factor should be eliminated and the analysis should be performed by an objective computerized system. In this study, we used descriptor-based features in the classification of the normal, abnormal and non-sperm patches. Additionally, we investigated the effects of two de-noising techniques in the classification performance due to the presence of noises in the patches. Results indicate that the de-noising processes have great importance in the classification performance. Moreover, a wavelet based adaptive de-noising approach dramatically increased the performance to 86% with support vector machine polynomial kernel classifier.
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