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首页> 外文期刊>植物工场学会誌 >Studies on quality evaluation of chrysanthemum cut flower (part 2) relation between experts' evaluation and morphological characteristics of cut flower
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Studies on quality evaluation of chrysanthemum cut flower (part 2) relation between experts' evaluation and morphological characteristics of cut flower

机译:专家评价与扦插菊花(第2部分)关系的质量评价研究

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摘要

In the previous installment of this series, the relationship between human being's evaluation and morphological features extracted from chrysanthemum cut flower was investigated in order to quantify the vague criteria that has been established based on human sense. It was also found that the individual morphological feature did not co-relate to human evaluation scores. It was considered that some combination of the features might improve the co-relation. The machine learning system such as the neural networks was considered to be usefully to automate the cut flower evaluation process.In this paper, length of cut flower, stem diameter, leaf area, length between flower and top leaf, leaf length, and, stem bend were selected for input parameters of neural networks whose output parameter was a human evaluation score. The neural networks were trained by KNT (Kalman Neuro Training)method. From the results, it was less than the human error resulted from the human double check procedure. It was also confirmed that the evaluation by the neural networks with several appropriate features was effective. In addition, a feasibility of automated cut flower evaluation sysetm, which does not involve human error, was found.
机译:在本系列之前的一期间,研究了人类评价和从菊花切花中提取的形态学特征的关系,以量化基于人类意识建立的模糊标准。还发现个体形态特征与人类评估分数没有与人类评估分数共同相关。被认为是特征的某些组合可能改善合作。诸如神经网络的机器学习系统被认为是有用的,以自动化剪切花卉评估过程。本文,剪花,茎直径,叶面积长度,花和顶部叶片之间的长度,叶子长度,以及茎选择弯曲的弯曲用于Neural网络的输入参数,其输出参数是人类评估得分。神经网络受到KNT(卡尔曼神经训练)方法的培训。从结果中,它少于人类双重检查程序导致的人为错误。还证实,具有若干适当特征的神经网络的评估是有效的。此外,发现,发现了自动切割花卉评估Sysetm的可行性,不涉及人为错误。

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