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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Scaling functions for landscape pattern metrics derived from remotely sensed data: Are their subpixel estimates really accurate?
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Scaling functions for landscape pattern metrics derived from remotely sensed data: Are their subpixel estimates really accurate?

机译:用于从遥感数据得出的景观格局度量的缩放功能:它们的子像素估计是否真的准确?

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One of the most rapidly growing applications of remotely sensed data is the derivation of landscape pattern metrics for the assessment of land cover condition and landscape change dynamics. The availability of a wide variety of sensors allows for characterisation of land cover at multiple spatial scales, and increases the need for practical scaling techniques that permit the comparison of pattern estimates across different spatial resolutions. Previous research has reported on scaling functions describing the variations of different landscape pattern metrics with spatial resolution; this may be particularly useful in downscaling spatial pattern characteristics, but no quantitative results or independent validation have been reported yet in this respect. We analysed a wide set of landscape data derived from remotely sensed images covering different study areas, sensor spatial resolutions, and classification approaches (pixel-based and object-based), which were aggregated to coarser resolutions through majority filters. We considered eight landscape pattern metrics for which predictable scaling functions have been reported, and compared the subpixel estimates provided by those scaling functions (when fitted to the metric values for different ranges of spatial resolution above the pixel level) with the true value of the metric at the subpixel resolution. We found that for metrics like mean patch size, landscape shape index or edge length, quite accurate subpixel estimates were achieved in all the datasets, even for relatively large downscaling factors. However, the opposite was the case for several of the metrics for which a predictable scaling behaviour had been previously described. The most accurate subpixel estimates were obtained when only a narrow range of spatial resolutions (closest to the subpixel resolution) was used to fit the scaling function, suggesting that the scaling functions are not fully scale invariant. We also found that the performance of available scaling functions is much lower in object-based data (in comparison with per-pixel classified data) for ranges of spatial resolution below the characteristic minimum mapping unit of the interpreted or segmented image. We conclude that scaling functions may be useful and reasonably accurate for estimating pattern metrics at the subpixel level, but only if the specific scaling recommendations and limitations reported in this study are taken into account.
机译:遥感数据增长最快的应用之一是派生用于评估土地覆盖状况和景观变化动态的景观格局指标。各种各样的传感器的可用性允许在多个空间尺度上表征土地覆盖,并增加了对允许在不同空间分辨率下进行模式估计值比较的实际尺度技术的需求。先前的研究报告了缩放函数,这些函数描述了不同景观格局度量随空间分辨率的变化;这在缩小空间图案特征方面可能特别有用,但在这方面尚无定量结果或独立验证的报道。我们分析了许多遥感数据,这些数据涵盖了不同研究区域,传感器空间分辨率和分类方法(基于像素和基于对象)的遥感图像,这些数据通过多数过滤器汇总为较粗略的分辨率。我们考虑了已报告了可预测缩放功能的八个景观格局度量,并将这些缩放函数提供的子像素估计值(当适合像素水平以上不同空间分辨率范围的度量值时)与度量的真实值进行了比较以亚像素分辨率。我们发现,对于像平均斑块大小,景观形状指数或边缘长度这样的度量,即使对于相对较大的缩小因子,在所有数据集中也能获得相当准确的亚像素估计。但是,对于先前已描述了可预测缩放行为的几个度量标准,情况恰恰相反。当仅使用狭窄范围的空间分辨率(最接近子像素分辨率)来拟合缩放函数时,可以获得最准确的子像素估计,这表明缩放函数并非完全缩放不变。我们还发现,对于空间分辨率范围低于解释或分割图像的特征最小映射单位的基于对象的数据(与按像素分类的数据相比),可用的缩放函数的性能要低得多。我们得出结论,只有在考虑到本研究中报告的特定缩放建议和限制的情况下,缩放函数对于估计亚像素级别的图案指标可能有用且相当准确。

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