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Classification of haploid and diploid maize seeds by using image processing techniques and support vector machines

机译:利用图像处理技术和支持向量机对单倍体和二倍体玉米种子进行分类

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In vivo maternal haploid technique is now widely used in advanced maize breeding programs. This technique shortens the breeding period and increases the efficiency of breeding. One of the important processes in this breeding technique is the selection of haploid seeds. The fact that this selection is performed manually reduces the selection success and causes time and labor loss. For this reason, it is a need to develop automatic selection methods that will save time and labor and increase selection success. In this study, a method was proposed to classify haploid and diploid maize seeds by using image processing techniques and support vector machines. Firstly, each maize seed is segmented from its original image. Secondly, five different features were extracted for each maize seed. Finally, obtained features vector is classified by using support vector machines. The proposed method performance was tested by 10-fold cross-validation method. As a result of the test, the success rate of haploid maize seed classification was calculated as 94.25% and the success rate of diploid maize seed classification was 77.91%.
机译:体内孕产妇单倍体技术现已广泛用于高级玉米育种程序。该技术缩短了繁殖期,提高了繁殖效率。该育种技术的重要过程之一是单倍体种子的选择。手动执行此选择的事实会降低选择成功率,并导致时间和劳力损失。因此,需要开发一种自动选择方法,该方法将节省时间和精力,并提高选择成功率。在这项研究中,提出了一种使用图像处理技术和支持向量机对单倍体和二倍体玉米种子进行分类的方法。首先,将每个玉米种子从其原始图像中分割出来。其次,为每个玉米种子提取了五个不同的特征。最后,使用支持向量机对获得的特征向量进行分类。通过10倍交叉验证方法对提出的方法性能进行了测试。试验结果表明,单倍体玉米种子分类成功率为94.25 \%,二倍体玉米种子分类成功率为77.91 \%。

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