Establish seedling quality classification standard for Chrysanthemum efficiently with help of deep clustering algorithm

Yanzhi Jing, Hongguang Zhao, Shujun Yu
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Abstract

Establishing reasonable standards for edible chrysanthemum seedlings helps promote seedling development, thereby improving plant quality. However, current grading methods have the several issues. The limitation that only support a few indicators causes information loss, and indicators selected to evaluate seedling level have a narrow applicability. Meanwhile, some methods misuse mathematical formulas. Therefore, we propose a simple, efficient, and generic framework, SQCSEF, for establishing seedling quality classification standards with flexible clustering modules, applicable to most plant species. In this study, we introduce the state-of-the-art deep clustering algorithm CVCL, using factor analysis to divide indicators into several perspectives as inputs for the CVCL method, resulting in more reasonable clusters and ultimately a grading standard $S_{cvcl}$ for edible chrysanthemum seedlings. Through conducting extensive experiments, we validate the correctness and efficiency of the proposed SQCSEF framework.
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借助深度聚类算法有效建立菊花种苗质量分类标准
制定合理的食用菊花种苗标准有助于促进种苗发育,从而提高植物质量。然而,目前的分级方法存在几个问题。仅支持少数几个指标的局限性造成了信息的缺失,所选择的评价秧苗水平的指标适用性较窄。同时,有些方法滥用数学公式。因此,我们提出了一个简单、高效、通用的框架 SQCSEF,用于建立苗木质量分类标准,具有灵活的聚类模块,适用于大多数植物物种。在本研究中,我们引入了最先进的深度聚类算法 CVCL,利用因子分析法将指标分为几个角度作为 CVCL 方法的输入,从而得到更合理的聚类,并最终得到食用菊花种苗的分级标准 $S_{cvcl}$。通过大量实验,我们验证了所提出的 SQCSEF 框架的正确性和高效性。
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