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The Effect of Nonlinear Wavelet Transform Based De-noising in Sperm Abnormality Classification

机译:非线性小波变换基于去噪的非线性小波变换在精子异常分类中的影响

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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.
机译:形态精子分析是基于雄性不孕症诊断的关键步骤之一。目前,由于其简单的实现,快速响应和廉价属性,分析主要由视觉评估技术进行。但是,观察者的专业知识水平在视觉评估技术方面具有重要意义。根据观察者分析能力,结果可以不同而误导。因此,应消除人类因子,并且应由客观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在正常,异常和非精子贴片的分类中。此外,由于斑块中存在噪声的存在,我们研究了两个去噪技术在分类性能中的影响。结果表明,去噪过程在分类性能方面具有重要意义。此外,通过支持向量机多项式内核分类器,基于小波的自适应脱光方法显着增加了86%的性能。

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