An Improved Fmask Algorithm in Tropical Regions for Landsat Images

Mei Sun, Yanchen Bo, Lei Cui, R. Li
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Abstract

Optical data plays an important role in various remote sensing applications. However, cloud and cloud shadow contamination reduce the availability of optical data, especially in tropical regions. Accurate identification of cloud and cloud shadow is an essential step in optical image preprocessing. The Function of Mask (FMASK) [1] is one of the most widely used cloud and cloud shadow detection methods. In view of the problems of some thin clouds and cloud shadows omission errors in tropical regions of FMASK, we develop an improved FMASK algorithm in tropical regions from the following two aspects: (1) Cloud detection: Firstly, the parameters and thresholds of FMASK are adjusted to generate the basic cloud layer; Secondly, the cloud index layer is calculated based on the bright features of clouds; Then, combining the temporal randomness and spectral characteristics of cloud, other bright objects are excluded and thin clouds are retained. (2) Cloud shadow detection: Firstly, the dark features of cloud shadows are mainly used to detect the basic cloud shadow layer; Secondly, combining the spectral and randomness characteristics of cloud shadow to avoid the interference of other dark objects. We randomly selected three experimental areas in tropical regions to verify the proposed algorithm developed in this paper. Through comparing and evaluating the accuracy of the clouds and cloud shadows mask generated based on the method in this paper with real samples drawn manually, the experiment results show that the average overall precision of clouds and cloud shadows mask generated based on the algorithm in this paper exceeding 80%. This improved FMASK algorithm improves the accuracy of clouds and cloud shadows detection in several tropical regions for Landsat images.
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一种改进的热带地区陆地卫星图像Fmask算法
光学数据在各种遥感应用中发挥着重要作用。然而,云和云阴影污染降低了光学数据的可用性,特别是在热带地区。云与云阴影的准确识别是光学图像预处理的重要环节。FMASK (Function of Mask)[1]是目前应用最广泛的云与云阴影检测方法之一。针对FMASK在热带地区存在一些薄云和云影遗漏错误的问题,我们从以下两个方面开发了一种改进的热带地区FMASK算法:(1)云检测:首先,调整FMASK的参数和阈值,生成基本云层;其次,根据云的亮度特征计算云指数层;然后,结合云的时间随机性和光谱特性,排除其他明亮物体,保留薄云。(2)云阴影检测:首先,主要利用云阴影的暗特征对基本云阴影层进行检测;其次,结合云层阴影的光谱和随机性特点,避免其他黑暗物体的干扰。我们在热带地区随机选择了三个实验区来验证本文提出的算法。通过将本文方法生成的云和云阴影掩模与人工绘制的真实样本的精度进行对比和评价,实验结果表明,基于本文算法生成的云和云阴影掩模的平均整体精度超过80%。改进的FMASK算法提高了陆地卫星图像在热带地区云和云影检测的精度。
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