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Vitality Assessment of Boar Sperm Using an Adaptive LBP Based on Oriented Deviation

机译:基于定向偏差的自适应LBP对公猪精子活力的评估

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摘要

A new method to describe sperm vitality using a hybrid combination of local and global texture descriptors is proposed in this paper. In this regard, a new adaptive local binary pattern (ALBP) descriptor is presented in order to carry out the local description. It is built by adding oriented standard deviation information to an ALBP descriptor in order to achieve a more complete representation of the images and hence it has been called ALBPS. Regarding semen vitality assessment, ALBPS outperformed previous literature works with an 81.88% of accuracy and it also yielded higher hit rates than the LBP and ALBP base-line methods. Concerning the global description of sperm heads, several classical texture algorithms were tested and a descriptor based on Wavelet transform and Haralick feature extraction (WCF13) obtained the best results. Both local and global descriptors were combined and the classification was carried out with a Support Vector Machine. Therefore, our proposal is novel in three ways. First, a new local feature extraction method ALBPS is introduced. Second, a hybrid method combining the proposed local ALBPS and a global descriptor is presented outperforming our first approach and all other methods evaluated for this problem. Third, vitality classification accuracy is greatly improved with the two former texture descriptors presented. F-Score and accuracy values were computed in order to measure the performance. The best overall result was yielded by combining ALBPS with WCF13 reaching a F-Score equals to 0.886 and an accuracy of 85.63%.
机译:本文提出了一种使用局部和全局纹理描述子混合描述精子活力的新方法。在这方面,提出了一种新的自适应局部二进制模式(ALBP)描述符,以便进行局部描述。它是通过将定向的标准偏差信息添加到ALBP描述符中来构建的,以实现图像的更完整表示,因此它被称为ALBPS。关于精液活力评估,ALBPS的准确率达到了81.88%,优于以前的文献,而且命中率也高于LBP和ALBP基线方法。关于精子头的全局描述,测试了几种经典的纹理算法,并且基于小波变换和Haralick特征提取(WCF13)的描述符获得了最佳结果。将局部和全局描述符组合在一起,并使用支持向量机进行分类。因此,我们的建议在三个方面是新颖的。首先,介绍了一种新的局部特征提取方法ALBPS。其次,提出了一种结合了建议的本地ALBPS和全局描述符的混合方法,该方法优于我们的第一种方法以及针对此问题评估的所有其他方法。第三,通过提供两个以前的纹理描述符,可以大大提高活力分类的准确性。计算F分数和准确性值以衡量性能。通过将ALBPS与WCF13结合使用可获得F分数等于0.886和85.63%的准确度,从而获得了最佳的总体结果。

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