用于需要数据耦合或叶柄删除的大规模分析的叶面积自动估值

P. Borianne, G. Brunel
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引用次数: 8

摘要

在本文中,我们提出了一种新的全自动方法,从桌面扫描仪产生的数值图像中分析均匀叶片的几何形状。我们的方法侧重于两个特定方面:数据耦合,特别是权重和面积匹配,以及在大规模分析背景下叶柄的数值删除。该过程限制了用户交互,叶子分割是自条件的,并通过k均值分类实现,给出了每个图像的阈值。结果根据扫描窗格上的叶子分布进行排列:叶子标签由行识别定义,通过聚类获得。结果布局简化了数据耦合,即不同设备产生的单个叶片测量的匹配。我们也提出了一种新的自动叶柄去除程序。删除方法,适用于每一个单叶,使用形态学分析,从叶的中间线。该过程是自适应的,无需专家校准。该方法在一个可用的应用程序中实现。在几个数据集上进行的测试显示,在广泛的叶片形状上取得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated valuation of leaves area for large-scale analysis needing data coupling or petioles deletion
In this paper, we present a new fully-automated approach to analyze the geometry of homogeneous leaves from numerical images produced by a desktop scanner. Our method is focused on two particular aspects: data coupling, specifically weights and areas matching, and numerical deletion of petioles, both in a large-scale analysis context. The process limits user interaction, the leaves segmentation is self conditioned and realized by a k-means classification giving the threshold value for each image. The results are arranged according to the leaves disposition on the scanner pane: the leaves labels are defined by recognitions of rows, obtained by clustering. The result layout eases the data coupling, i.e. the matching of individual leaves measures produced by different devices. We do also propose a new automated petiole removal procedure. The deletion method, applied to each single leaf, uses a morphological analysis from the leaf medial line. The process is adaptive, without expert calibration. The method is implemented in a ready to use application. Tests hold on several data sets show satisfactory results on a wide range of leaf shapes.
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