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Use of Support Vector Machines and Neural Networks to Assess Boar Sperm Viability

机译:使用支持向量机和神经网络评估野猪精子的活力

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This paper employs well-known techniques as Support Vector Machines and Neural Networks in order to classify images of boar sperm cells. Acrosome integrity gives information about if a sperm cell is able to fertilize an oocyte. If the acrosome is intact, the fertilization is possible. Otherwise, if a sperm cell has already reacted and has lost its acrosome or even if it is going through the capacitation process, such sperm cell has lost its capability to fertilize. Using a set of descriptors already proposed to describe the acrosome state of a boar sperm cell image, two different classifiers are considered. Results show the classification accuracy improves previous results.
机译:本文采用众所周知的技术,作为支持向量机和神经网络,以分类野猪精子细胞的图像。取物型完整性提供了关于精子细胞能够施肥卵母细胞的信息。如果取代剂完整,则可能是施肥。否则,如果精子细胞已经反应并且已经失去了肌肉组,或者即使经过电容过程,这种精子也会失去了施肥的能力。使用已经提出的一组描述符来描述公猪精子细胞图像的副状态,考虑了两种不同的分类器。结果显示分类准确性提高了以前的结果。

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