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Deep Learning for Classifying Maize Seeds in Double Haploid Induction Process

机译:深层学习对双倍单倍体感应过程进行分类玉米种子

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In industrial agricultural breeding, double haploid based generation of inbred maize lines has accelerated the time to market of commercial seed varieties [5]. Traditionally, haploid corn seeds are manually discriminated from the diploid seeds using visual indications of the molecular marker system that is selectively expressed in the embryo region of the diploid seeds. In the industrial scale, there have been two notable automation efforts based on the R1-nj marker system [2, 4]. However due to the extensive phenotypic variation of the marker expression [1] and heterogeneity arising from image acquisition in the field, developing computer vision methods to classify seed images is challenging, and approaches robust in recovering haploids are lacking.
机译:在工业农业育种中,双倍单倍体基血管玉米线条已经加速了商业种子品种市场的时间[5]。传统上,使用在二倍体种子的胚胎区域中选择性地表达的分子标记体系的视觉指示,从二倍体种子手动地区分单倍体玉米种子。在工业规模中,基于R1-NJ标记系统[2,4]有两个值得注意的自动化工作。然而,由于标记表达的广泛表型变异[1]和由该领域的图像采集产生的异质性,发展计算机视觉方法以对种子图像进行分类是具有挑战性的,并且缺乏接近恢复单倍体的稳健。

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