雷达图像中地杂波的滤波技术

O. Raaf, O. Aklil, Z. Arrag
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引用次数: 0

摘要

本文研究了从气象雷达图像中提取雨点的检测与滤波问题。预期的影响是:一方面,提取这些图像中包含的正确降雨率,另一方面,提高这些类型的遥感设备的性能。这是为了自动识别云团,描述它们的特征,并预测它们随时间的演变。为了分析这一现象,我们使用了在阿尔及利亚东部塞提夫地区拍摄的512 × 512像素的雷达图像。我们的研究包括通过使用纹理参数消除来自地面的寄生回波,特别是由于雷达周围的山脉。对于每种类型的回声,我们通过扫描整个图像将Unser的参数计算为5 $\ × $ 5像素窗口。然后给出这些参数的直方图,并确定每个参数的判别阈值。从局部均匀性、差的方差、熵、和的熵、差的熵、能量、和的能量、差的能量等方面得到了令人满意的模拟结果,差因子存在的概率大于95%。我们发现,在不改变降水回波的情况下,地面回波的主要部分被成功地去除,最主要的纹理参数是差能量和和方差。原因是对于这两个参数,差异因子的概率在98%以上,优于其他参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Technique for Filtering Ground Clutter in Radar Images
This paper deals with the detection and filtering of rain cells extracted from images taken by a weather radar. The intended impact is: on one hand, to extract the correct rain rate contained by these images and on the other hand, to increase the performance of these types of remote sensing devices. This is to automatically identify cloud masses, characterize them and predict their evolution over the time. To analyze this phenomenon, we used 512 x512 pixels radar images taken in the region of Setif in eastern Algeria. Our study consists of eliminating parasite echoes resulting from the ground in particular due to the mountain surrounding the radar, by using textural parameters. For every type of echoes we calculate the parameters of Unser into a 5 $\times $ 5 pixels window by sweeping the entire image. Then we present the histograms of these parameters and determine the discrimination thresholds for each one of them. The simulations results obtained from the local homogeneity, the variance of the differences, the entropy, the entropy of the sums, the entropy of the differences, the energy, the energy of the sums and the energy of the differences are very satisfactory with a probability of difference factor greater than 95%. We have found that the most dominant textural parameters are the Energy of differences and Variance of the sum as the major part of the ground echoes have been successfully removed without altering the precipitation echoes. The reason is that for these two parameters, the probability of difference factor was over 98%, which is better that the rest of the parameters.
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