用于精确生成DEM的InSAR图像去噪滤波器

M. Hamid, M. Safy
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引用次数: 1

摘要

InSAR图像噪声对相位展开过程的效率有很大影响,从而影响数字高程模型(DEM)的正确生成。然而,通过良好的干涉相位图像滤波,相位展开可以更容易和更有效地实现,该滤波可以通过高降噪,完美地保留图像细节,减少残差数量来实现。本文利用遗传算法对灰度软形态滤波器进行优化,用于滤除干涉相位图像噪声。滤波器参数被优化,以实现降噪量和图像细节保存程度之间的最佳平衡。利用仿真和真实干涉图对优化后的滤波器的性能进行了评价。评价基于客观和主观两方面的指标。结果表明,该滤波器具有较好的降噪效果,保留了较好的图像细节,残差很小。这种出色的性能保证了有效的相位展开,从而准确地生成DEM。结果还表明,该滤波器优于其他用于干涉图图像去噪的传统滤波器。
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InSAR Image Denoising Filter for Accurate DEM Generation
InSAR image noise has a great effect on the efficiency of the phase unwrapping process and consequently the correct generation of the digital elevation model (DEM). However, phase unwrapping can be easier and more efficient by excellent interferometric phase image filtering which can be achieved by high noise reduction, perfect preservation of the image detail, and decreasing the number of residues. In this paper, a grey-scale soft morphological filter is optimized using the genetic algorithm and used to filter out the interferometric phase image noise. The filter parameters are optimized to achieve an optimum balance between the amount of noise reduction and the degree of preservation of the image detail. Simulated and real interferograms are employed to evaluate the performance of the optimized filter. The evaluation is based on both objective and subjective measures. The results demonstrate that the proposed filter achieves high noise reduction with perfect image detail preservation and very small number of residues. This outstanding performance guarantees efficient phase unwrapping and hence accurate DEM generation. The results show also that the filter outperforms other traditional filters used for denoising interferogram images.
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