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A Long Time-Series Radiometric Normalization Method for Landsat Images

机译:Landsat图像的长时间序列辐射归一化方法

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摘要

Radiometric normalization attempts to normalize the radiomimetic distortion caused by non-land surface-related factors, for example, different atmospheric conditions at image acquisition time and sensor factors, and to improve the radiometric consistency between remote sensing images. Using a remote sensing image and a reference image as a pair is a traditional method of performing radiometric normalization. However, when applied to the radiometric normalization of long time-series of images, this method has two deficiencies: first, different pseudo-invariant features (PIFs)—radiometric characteristics of which do not change with time—are extracted in different pairs of images; and second, when processing an image based on a reference, we can minimize the residual between them, but the residual between temporally adjacent images may induce steep increases and decreases, which may conceal the information contained in the time-series indicators, such as vegetative index. To overcome these two problems, we propose an optimization strategy for radiometric normalization of long time-series of remote sensing images. First, the time-series gray-scale values for a pixel in the near-infrared band are sorted in ascending order and segmented into different parts. Second, the outliers and inliers of the time-series observation are determined using a modified Inflexion Based Cloud Detection (IBCD) method. Third, the variation amplitudes of the PIFs are smaller than for vegetation but larger than for water, and accordingly the PIFs are identified. Last, a novel optimization strategy aimed at minimizing the correction residual between the image to be processed and the images processed previously is adopted to determine the radiometric normalization sequence. Time-series images from the Thematic Mapper onboard Landsat 5 for Hangzhou City are selected for the experiments, and the results suggest that our method can effectively eliminate the radiometric distortion and preserve the variation of vegetation in the time-series of images. Smoother time-series profiles of gray-scale values and uniform root mean square error distributions can be obtained compared with those of the traditional method, which indicates that our method can obtain better radiometric consistency and normalization performance.
机译:辐射归一化试图归一化由非陆地表面相关因素(例如,图像获取时的不同大气条件和传感器因素)引起的辐射拟态失真,并提高遥感图像之间的辐射一致性。将遥感图像和参考图像成对使用是执行辐射归一化的传统方法。但是,将这种方法应用于长时间序列图像的辐射归一化时,存在两个缺陷:首先,在不同的图像对中提取不同的伪不变特征(PIF)(其辐射特征不会随时间变化)。 ;其次,当基于参考来处理图像时,我们可以使它们之间的残差最小化,但是时间相邻图像之间的残差可能会导致陡峭的增加和减少,这可能掩盖了时间序列指标中包含的信息,例如植物性指数。为了克服这两个问题,我们提出了一种优化策略,用于对遥感图像的长时间序列进行辐射归一化。首先,将近红外波段中像素的时序灰度值按升序排序,然后细分为不同的部分。其次,使用改进的基于弯曲的云检测(IBCD)方法确定时间序列观测值的离群值和离群值。第三,PIF的变化幅度小于植被,但大于水,因此可以确定PIF。最后,采用新颖的优化策略,旨在最小化要处理的图像和先前处理的图像之间的校正残差,以确定辐射归一化序列。实验选择了杭州五区Landsat 5号专题测绘仪的时间序列图像,结果表明我们的方法可以有效消除图像的辐射畸变并保留植被的变化。与传统方法相比,可以获得更平滑的灰度值时间序列轮廓和均方根误差分布均匀,这表明我们的方法可以获得更好的辐射一致性和归一化性能。

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