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Assessing the potential of sub-pixel classification in a mixed conifer-broadleaf forest

机译:评估混合针叶叶林中子像素分类的潜力

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New Zealand's indigenous mixed conifer-broadleaf forests are undergoing significant changes in composition, often due to the effect of introduced herbivores. The change can be broadly characterised by a shift in the fraction of four forest groups: emergent conifers, high canopy broadleaf trees, low canopy broadleaf trees, and tree ferns. The authors present an initial evaluation of a sub-pixel classification algorithm for classifying these forest groups from Landsat TM imagery. The authors conclude that the algorithm has potential for mapping the fraction of the groups in mixed conifer-broadleaf forests. This is supported by strong visual similarities between the mapped forest classes and the spatial distribution and frequency of the classified forest groups, and by the good quantitative agreement between the relative amounts of each indicator group in each forest class. The study also highlights the difficulties in obtaining training data and verifying the results of sub-pixel classification in a heterogeneous environment.
机译:新西兰的土着混合针叶树 - 阔叶森林经历了成分的显着变化,往往是由于引入的草本病变的效果。这些变化可以广泛地表征四种森林群体分数:紧急针叶树,高层冠层,低层阔叶树和树蕨类植物。作者呈现了对从Landsat TM图像分类这些森林组的子像素分类算法的初步评估。作者得出结论,该算法具有映射混合针叶树 - 阔叶林中群体的一部分的可能性。这是通过映射森林类别与分类森林集团的空间分布和频率之间的强烈视觉相似之处支持,以及每个森林类别中每个指标组的相对量之间的良好定量协议。该研究还突出了获得训练数据并验证异构环境中子像素分类结果的困难。

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