Improved Noise Filtering Technique For Wake Detection In SAR Image Under Rough Sea Condition

P. Subashini, P. V. H. Kumar, S. Lekshmi, M. Krishnaveni, T. Dhivyaprabha
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Abstract

Sea surface is rough when the weather condition at sea is rough due to strong wind, waves, swell and storms. Under the rough sea condition, the propagation of radar energy and the subsequent radar coverage is strongly influenced by various atmospheric effects, such as, strong wind, wave height, weather condition, oceanic currents and rainstorms. The identification of ship wakes in Synthetic Aperture Radar (SAR) image under the rough sea condition is viewed as a highly complex task for the real time monitoring and surveillance applications. It becomes a quite big challenge due to coherent radiation of backscattering signals and the multiplicative speckle noise found in SAR images. The objective of this work is to develop an optimized Discrete Wavelet Transform (DWT) based on Synergistic Fibroblast Optimization (SFO) algorithm for filtering speckle noise in SAR image which are captured under rough sea condition. An improved filtering technique is tested with the real time SAR images acquired from European Space Agency (ESA) sentinel scientific data hub and its efficacy is further validated by employing Discrete Radon Transform (DRT) method to detect ship wakes (linear signature) in SAR image under rough sea surface. The performance of SFO based wavelet transform is evaluated and compared with conventional DWT families, namely, daubechies, coiflet, symlet, discrete meyer, biorthogonal and reverse biorthogonal to conduct the better investigation of this study. Investigation of results illustrates the effectiveness of optimized method, in terms of, noise suppression and its implication on radon transform method to localize the identification of ship wakes in SAR imagery.
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海浪条件下SAR图像尾迹检测的改进噪声滤波技术
海面波涛汹涌是指海上由于强风、波浪、涌浪和风暴等因素造成的恶劣天气状况。在风浪条件下,雷达能量的传播和随后的雷达覆盖受到各种大气效应的强烈影响,如强风、浪高、天气条件、洋流和暴雨。恶劣海况下合成孔径雷达(SAR)图像中船舶尾迹的识别是一项非常复杂的实时监测任务。由于后向散射信号的相干辐射和SAR图像中存在的乘性散斑噪声,这成为一个相当大的挑战。本文的目的是开发一种基于增效成纤维细胞优化(SFO)算法的优化离散小波变换(DWT),用于过滤恶劣海况下SAR图像中的斑点噪声。利用欧空局(ESA)哨兵科学数据中心获取的实时SAR图像对改进后的滤波技术进行了测试,并利用离散Radon变换(DRT)方法对粗糙海面下SAR图像中的船舶尾迹(线性特征)进行检测,进一步验证了改进后的滤波技术的有效性。对基于SFO的小波变换的性能进行了评价,并与传统的小波变换族(即daubechies、coiflet、symlet、离散meyer、双正交和反向双正交)进行了比较,以便更好地研究本研究。结果表明,优化后的方法在抑制噪声方面是有效的,并对雷达图像中船舶尾迹的radon变换方法进行了定位识别。
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