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Neural network classification of sweet potato embryos

机译:甘薯胚的神经网络分类

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Abstract: embryogenesis is a process that allows for the in vitro propagation of thousands of plants in sub-liter size vessels and has been successfully applied to many significant species. The heterogeneity of maturity and quality of embryos produced with this technique requires sorting to obtain a uniform product. An automated harvester is being developed at the University of Florida to sort embryos in vitro at different stages of maturation in a suspension culture. The system utilizes machine vision to characterize embryo morphology and a fluidic based separation device to isolate embryos associated with a pre- defined, targeted morphology. Two different backpropagation neural networks (BNN) were used to classify embryos based on information extracted from the vision system. One network utilized geometric features such as embryo area, length, and symmetry as inputs. The alternative network utilized polar coordinates of an embryo's perimeter with respect to its centroid as inputs. The performances of both techniques were compared with each other and with an embryo classification method based on linear discriminant analysis (LDA). Similar results were obtained with all three techniques. Classification efficiency was improved by reducing the dimension of the feature vector trough a forward stepwise analysis by LDA. In order to enhance the purity of the sample selected as harvestable, a reject to classify option was introduced in the model and analyzed. The best classifier performances (76% overall correct classifications, 75% harvestable objects properly classified, homogeneity improvement ratio 1.5) were obtained using 8 features in a BNN. !5
机译:摘要:胚胎发生是允许数千种植物在不超过1升大小的容器中进行体外繁殖的过程,并已成功地应用于许多重要物种。用这种技术生产的胚胎的成熟度和质量的异质性需要分选以获得均匀的产品。佛罗里达大学正在开发一种自动收割机,以在悬浮培养的不同成熟阶段体外分选胚胎。该系统利用机器视觉表征胚胎形态,并利用基于流体的分离装置来分离与预定的靶向形态相关的胚胎。基于从视觉系统提取的信息,使用了两个不同的反向传播神经网络(BNN)对胚胎进行分类。一个网络利用诸如胚胎面积,长度和对称性等几何特征作为输入。替代网络利用胚胎周长相对于其质心的极坐标作为输入。将这两种技术的性能进行了比较,并使用了基于线性判别分析(LDA)的胚胎分类方法进行了比较。所有这三种技术都获得了相似的结果。通过使用LDA进行逐步分析,可减小特征向量的维数,从而提高了分类效率。为了提高选定为可收获样品的纯度,将拒绝分类选项引入模型并进行分析。在BNN中使用8个功能获得了最佳的分类器性能(76%的整体正确分类,75%的可收集对象正确分类,同质性改善率1.5)。 !5

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