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Method as a preprocessing stage for tracking sperms progressive motility

机译:作为跟踪精子进行性运动的预处理阶段的方法

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Methods of human semen assessment are quite wide ranging. In this paper, we use background subtraction methods in order to detect progressive sperms whose quality of movement strongly influence fertility. Robust Principal Component Analysis (RPCA) is a powerful algorithm which has been used recently for background subtraction purposes. Sperm tracking problem can also be defined as a background subtraction problem. In RPCA algorithm, data is represented by a low rank plus sparse matrix. In our approach, the foreground data is recovered through such matrix decomposition. We compare the RPCA approach with four other background subtraction methods in order to check accuracy of algorithm as a preprocessing stage in sperm tracking. Two basic background subtraction methods of approximate median and frame difference have been examined. Furthermore, another more recent method of mixture of Gaussian model and robust probabilistic matrix factorization have been used for comparison. As the results show, the RPCA approach is more robust and less sensitive to outliers in comparison with other background subtraction methods.
机译:人类精液评估的方法范围很广。在本文中,我们使用背景扣除法来检测进行性精子,这些精子的运动质量强烈影响生育能力。稳健的主成分分析(RPCA)是一种功能强大的算法,最近已用于背景扣除。精子追踪问题也可以定义为背景扣除问题。在RPCA算法中,数据由低秩加稀疏矩阵表示。在我们的方法中,通过这种矩阵分解来恢复前景数据。我们将RPCA方法与其他四种背景扣除方法进行比较,以检查算法作为精子跟踪预处理阶段的准确性。研究了两种近似的中值和帧差的基本背景扣除方法。此外,将高斯模型与鲁棒概率矩阵分解混合的另一种较新方法已用于比较。结果表明,与其他背景减法相比,RPCA方法更加健壮,并且对异常值的敏感性较低。

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