首页> 外文期刊>Journal of Vegetation Science >Supervised classification of plant communities with artificial neural networks.
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Supervised classification of plant communities with artificial neural networks.

机译:用人工神经网络监督植物群落的分类。

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Questions: Are artificial neural networks useful for the automatic assignment of species composition records from vegetation plots to a priori established classes (vegetation units)? Is the assignment more accurate (1) if the classes are defined by numerical classification rather than by expert-based classification; (2) if the training data set is selected to include plots that are richer in diagnostic species of particular classes? Material: Species composition records (releves) from 4186 plots of Czech grasslands. Methods: Plots were classified into 11 phytosociological alliances (expert classification) and into 11 clusters derived from numerical cluster analysis. Some plots were used for training the classifiers, which were the multi-layer perceptrons (MLP; a type of artificial neural network). Other plots were used for testing the performance of these classifiers. Plots used for training were selected (1) randomly; (2) according to higher representation of diagnostic species of particular classes. Results: Different MLP classifiers correctly classified 77-83% of plots to the classes of the expert classification and 70-78% to the classes of the numerical classification. The better result in the former case was mainly due to two classes in the expert classification, which were well recognized by the classifiers and at the same time contained a large proportion of the plots of the entire data set. Correct classification of the plots belonging to these large classes resulted in a good overall performance of the classifiers. After training with randomly chosen plots, the classifiers produced better results than after training with plots that contained more diagnostic species. This indicates that the biased selection of the training plots disables the classifiers to recognize the entire variation within the classes and results in errors when new plots are to be classified. Conclusions: MLP is suitable for assigning vegetation plots to already established classes. Unlike some other methods of supervised classification, it performs well even in communities that are poor in diagnostic species. However, the method does not provide clear assignment keys that could be used for class identification in field surveys. It is therefore more appropriate in applications that aim at a reliable class assignment rather than understanding the assignment rules..
机译:问题:人工神经网络对于将植物地块的物种组成记录自动分配给先验建立的类(植被单位)有用吗?分配是否更准确(1)如果类别是通过数字分类而不是通过基于专家的分类来定义的; (2)是否选择了训练数据集以包含特定类别的诊断物种较丰富的地块?资料:来自捷克草原4186个样地的物种组成记录(泄密)。方法:将地块分为11个植物社会学联盟(专家分类)和11个通过数值聚类分析得出的聚类。一些图用于训练分类器,即多层感知器(MLP;一种人工神经网络)。其他图用于测试这些分类器的性能。 (1)随机选择用于训练的图; (2)根据特定类别的诊断物种的较高表示形式。结果:不同的MLP分类器正确地将77-83%的地块分类为专家分类的类别,将70-8%的数字分类为数字分类的类别。在前一种情况下,更好的结果主要是由于专家分类中的两个类别,这些类别已被分类器很好地识别,并且同时包含了整个数据集的大部分图。对属于这些大类的地块进行正确分类,可以使分类器具有良好的整体性能。用随机选择的样地训练后,分类器比使用包含更多诊断种类的样地训练后产生更好的结果。这表明训练图的偏向选择使分类器无法识别类内的整个变化,并且在对新图进行分类时会导致错误。结论:MLP适合将植被地块分配给已建立的类。与其他一些监督分类方法不同,它甚至在诊断物种不多的社区中也表现良好。但是,该方法没有提供可用于现场调查中类别识别的明确分配键。因此,在针对可靠的类分配而不是了解分配规则的应用程序中,此方法更为合适。

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