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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Landscape analysis of wetland plant functional types: The effects of image segmentation scale, vegetation classes and classification methods
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Landscape analysis of wetland plant functional types: The effects of image segmentation scale, vegetation classes and classification methods

机译:湿地植物功能类型的景观分析:图像分割尺度,植被类别和分类方法的影响

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Remote sensing-based analyses of vegetation function such as photosynthesis and productivity are challenging in wetlands with complex cover and difficult field access. Recent advances in object-based image analysis (OBIA) and machine-learning algorithms offer new image classification tools; however, few comparisons of different approaches have been discussed to date. We applied OBIA to delineate wetland plant functional types (PFTs) for Poyang Lake, the largest freshwater lake in China and Ramsar wetland conservation site, from a spring 2008 Landsat TM image. We targeted major PFTs that represent dominant vegetation groups along wetland inundation gradients and affect ecosystem biogeochemical cycles and ecological habitats. Classification results were compared among: a) several "small" object segmentation scales (with average object sizes 1350-9000m 2); b) algorithms from six families of statistical machine-learning classifiers (Bayesian, Logistic, Neural Network, Decision Trees, K-Nearest Neighbors and Support Vector Machines) and c) two hierarchical levels of vegetation classification, a generalized 3-class set and a more specific 6-class set. We also examined the response of classification accuracy to four basic object-level texture metrics. The highest accuracies (>85-90%) and best agreement among algorithms occurred at coarser object scales rather than close-to-pixel scales. No single machine-learning algorithm was consistently superior at all scales, although support vector machine, k-nearest neighbor and artificial neural network most frequently provided the highest overall and PFT-specific accuracies. Including texture metrics had both positive and negative low-magnitude effects on classification accuracy that were not consistent among scale values, algorithms or PFT classes. Individual PFTs differed in scales at which they were best discriminated from others, reflecting their unique landscape positions, ecology of dominant species and disturbance agents. There was a 29-35% disagreement between mapped areas of generalized PFTs and their respective subclasses, suggesting potential mismatches between the ecological classification scheme and PFT landscape patch structure, and raising concern on error propagation in multi-scale classifications. We conclude that OBIA with machine-learning classifiers is useful for landscape vegetation analyses, however, considerations of spatial scale and image segmentation outcomes are critical in mapping PFTs and should be more thoroughly investigated in future work.
机译:在植被复杂且难以进入农田的湿地中,基于遥感的植被功能分析(例如光合作用和生产力)面临挑战。基于对象的图像分析(OBIA)和机器学习算法的最新进展提供了新的图像分类工具。但是,迄今为止,几乎没有讨论过不同方法的比较。我们从2008年春季的Landsat TM影像中应用OBIA来描绘Po阳湖(中国最大的淡水湖和拉姆萨尔湿地保护区)的湿地植物功能类型(PFT)。我们针对代表沿湿地淹没梯度的优势植被群的主要PFT,并影响生态系统的生物地球化学循环和生态生境。在以下方面比较了分类结果:a)几种“小”对象分割尺度(平均对象大小为1350-9000m 2); b)来自六个统计机器学习分类器(贝叶斯,逻辑,神经网络,决策树,K最近邻和支持向量机)的算法,并且c)植被分类的两个层次级别,广义的3类集和a更具体的6类设置。我们还检查了分类准确性对四个基本对象级纹理度量的响应。算法之间的最高准确性(> 85-90%)和最佳一致性是在较粗糙的对象比例而不是接近像素比例的情况下发生的。尽管支持向量机,k最近邻和人工神经网络最常提供最高的总体和特定于PFT的准确性,但没有任何一种机器学习算法在所有规模上都能始终如一地优越。包括纹理度量在内的低幅度对分类精度都有正负两个方面的影响,在比例值,算法或PFT类之间不一致。个体PFT的规模不同,可以最好地区分,反映了它们独特的景观位置,优势物种的生态和干扰因子。广义PFT的映射区域与其各自的子类之间存在29-35%的分歧,这表明生态分类方案与PFT景观斑块结构之间可能存在不匹配,并引起了对多尺度分类中误差传播的关注。我们得出的结论是,带有机器学习分类器的OBIA对于景观植被分析很有用,但是,空间尺度和图像分割结果的考虑对于绘制PFT至关重要,应该在以后的工作中进行更彻底的研究。

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