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Dealing with vagueness in complex forest landscapes: A soft classification approach through a niche-based distribution model

机译:处理复杂森林景观中的模糊性:通过基于细分市场的分布模型的软分类方法

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摘要

The increasing interest in biodiversity conservation has led to the development of new approaches to facilitate ecologically based conservation policies and management plans. In this context, the development of effective methods for the classification of forest types constitutes a crucial issue as forests represent the most widespread vegetation structure and play a key role in ecosystem functioning. In this study a maximum entropy approach (Maxent) to forest type classification in a complex Mediterranean area, has been investigated. Maxent, a niche-based model of species/habitat distribution, allowed researchers to estimate the potential distribution of four forest types: Holm oak, Mixed oak, Mixed broadleaved and Riparian forests. The Maxent model's internal tests have proved a powerful tool for estimating the model's accuracy and analyzing the effects of the most important variables in the produced models. Moreover the comparison with a spectral response-based fuzzy classification, showed a higher accuracy in the Maxent outputs, demonstrating how the use of environmental variables, combined with spectral information in the classification of natural or semi-natural land cover classes, improves map accuracies. The modeling approach followed by this study, taking into account the uncertainty proper of the natural ecosystems and the use of environmental variables in land cover classification, can represent a useful approach to making more efficient and effective field inventories and to developing effective conservation policies.
机译:人们对生物多样性保护的兴趣日益浓厚,从而导致了新方法的发展,以促进基于生态的保护政策和管理计划。在这种情况下,开发有效的森林类型分类方法就成为一个关键问题,因为森林代表了最广泛的植被结构,并且在生态系统功能中发挥着关键作用。在这项研究中,已经研究了在复杂的地中海地区对森林类型分类的最大熵方法(Maxent)。 Maxent是一种基于生态位的物种/栖息地分布模型,它使研究人员能够估计四种森林类型的潜在分布:阔叶栎,混合栎,阔叶混交林和河岸林。 Maxent模型的内部测试已证明是评估模型准确性和分析生产模型中最重要变量的影响的强大工具。此外,与基于光谱响应的模糊分类的比较显示出Maxent输出的准确性更高,这表明在自然或半天然土地覆盖类别的分类中,结合环境变量的使用以及光谱信息如何提高了地图的准确性。这项研究采用的建模方法,考虑到自然生态系统的不确定性以及土地覆被分类中环境变量的使用,可以代表一种有用的方法,可用于制定更有效的田野清单并制定有效的保护政策。

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