基于特征描述算法的精子检测与分析

Mustafa Furkan Keskenler, A. Hasiloglu, Gülsah Tümüklü Özyer, B. Özyer, E. Şimşek
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引用次数: 3

摘要

近年来,计算机辅助精子分析(CASA)系统已被用于检查人类和动物精子的流动性和形态。虽然这些系统检测精子,但它们无法检测到多个精子图像,这些精子图像在活动精子之间重合或重叠。此外,在精子检测中,对背景的光因素不能获得敏感的结果。为了改善上述问题,利用随机森林算法,对HOG、LBP和颜色直方图特征提取方法得到的图像进行精子检测。在对实验结果进行检查时,发现图像的成功率达到了92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sperm Detection and Analysis Using Feature Description Algorithms
Computer aided sperm analysis (CASA) systems have been used in recent years to examine the mobility and morphology of human and animal sperm. While these systems detect sperm, they fail to detect more than one sperm image coinciding or overlapping between the motile spermatozoa. In addition, sensitive results can not be obtained against the light factor of the background in sperm detection. In order to improve the above mentioned problems, using the random forest algorithm, sperm detection was performed on the images obtained from the HOG, LBP and color histogram feature extraction methods. When the experimental results were examined, it was observed that 92% success rate was achieved in the images.
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