首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Automated cloud, cloud shadow, and snow detection in multitemporal Landsat data:An algorithm designed specifically for monitoring land cover change
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Automated cloud, cloud shadow, and snow detection in multitemporal Landsat data:An algorithm designed specifically for monitoring land cover change

机译:多时态Landsat数据中的自动云,云阴影和积雪检测:一种专门用于监视土地覆盖变化的算法

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We developed a new algorithm called Tmask (multiTemporal mask) for automated masking of cloud, cloud shadow, and snow for multitemporal Landsat images. This algorithm consists of two steps. The first step is based on a single-date algorithm called Fmask (Function of mask) that initially screens most of the clouds, cloud shadows, and snow. The second step benefits from the extra temporal information from the remaining "clear" pixels and further improves the cloud, cloud shadow, and snow mask. Three Top Of Atmosphere (TOA) reflectance bands (Bands 2, 4, and 5 - Landsat-7 band numbering) are used in a Robust Iteratively Reweighted Least Squares (RIRLS) method to estimate a time series model for each pixel. By comparing model estimates with Landsat observations for the three spectral bands, the Tmask algorithm is capable of detecting any remaining clouds, cloud shadows, and snow for an entire stack of Landsat images. Generally, this algorithm will not falsely identify land cover changes as clouds, cloud shadows, or snow, as it is capable of modeling land cover change. The multitemporal images also provide extra information for better discrimination of cloud and snow, which is difficult for single-date algorithm. A snow threshold is derived for Band 5 TOA reflectance for each pixel at each specific time based on a modified Norwegian Linear Reflectance-to-Snow-Cover (NLR) algorithm. By comparing the results of Tmaskwith a single-date algorithm(Fmask) formultitemporal Landsat images located at Path 12 Row 31, significant improvements are observed for identification of clouds, cloud shadows, and snow. The most significant improvement is observed for cloud shadow detection. Many of the errors in cloud, cloud shadow, and snow detection observed in Fmask are corrected by the Tmask algorithm. The goal is development of a cloud, cloud shadow, and snow detection algorithm that results in a multitemporal stack of images that is free of "noise" factors and thus suitable for detection of land cover change.
机译:我们为多时态Landsat图像开发了一种称为Tmask(多时域遮罩)的新算法,用于自动遮盖云,云阴影和雪。该算法包括两个步骤。第一步基于称为Fmask(蒙版功能)的单日算法,该算法最初会筛选大多数云,云阴影和雪。第二步得益于来自其余“清晰”像素的额外时间信息,并进一步改善了云,云影和雪罩。在稳健的迭代加权最小二乘(RIRLS)方法中使用了三个“大气顶部”(TOA)反射带(频带2、4和5-Landsat-7频带编号)来估计每个像素的时间序列模型。通过将模型估计值与Landsat观测值的三个光谱带进行比较,Tmask算法能够检测整个Landsat图像堆栈中任何剩余的云,云影和积雪。通常,该算法不会对土地覆被变化进行错误地识别为云,云阴影或积雪,因为它能够对土地覆被变化进行建模。多时相图像还提供了额外的信息,以更好地区分云和雪,这对于单日期算法而言是困难的。根据修改后的挪威线性雪面反射率(NLR)算法,在每个特定时间针对每个像素的波段5 TOA反射率得出降雪阈值。通过将Tmask的结果与单日期算法(Fmask)对比位于路径12行31的多时相Landsat图像,观察到了对云,云阴影和雪的识别的显着改进。对于云阴影检测,观察到最明显的改进。通过Tmask算法可以纠正Fmask中观察到的许多云,云阴影和积雪检测错误。目的是开发一种云,云阴影和积雪检测算法,该算法可生成多时相图像堆,其中没有“噪声”因素,因此适合检测土地覆盖变化。

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