Wave Height Estimation From Radar Images Under Rainy Conditions Based on Context-Aware Segmentation and Iterative Dehazing

Zhiding Yang;Weimin Huang
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Abstract

This study introduces a novel approach to mitigate the impact of rain on significant wave height (SWH) measurements using X-band marine radar. First, the proposed method uses a transformer-based segmentation model, SegFormer, to divide radar images into four distinct regions: clear wave signatures, rain-contaminated areas, low backscatter areas, and wind-dominated rain areas. Given that radar wave signatures in rain-contaminated regions are significantly blurred, this segmentation step identifies regions with clear wave signatures, ensuring subsequent analysis to be more accurate. Next, an iterative dehazing method, which adaptively enhances image clarity based on gradient standard deviation (GSD), is applied to achieve optimal dehazing effects. Finally, the segmented and dehazed polar radar images are transformed into the Cartesian coordinates, where subimages from valid regions are selected for SWH estimation using the SWHFormer model. The radar dataset used for test was collected from a shipborne Decca radar in a sea area 300 km from Halifax, Canada, in 2008. The SegFormer model demonstrates superior segmentation performance, with 1.3% improvement in accuracy compared with the SegNet-based method. Besides, the iterative dehazing method significantly reduces haze effects in heavily contaminated images, outperforming traditional one-time dehazing methods in both precision and robustness for SWH estimation. Results show that the combination of segmentation and iterative dehazing reduces the root mean square deviation (RMSD) of SWH estimation from 0.42 and 0.33 to 0.28 m, compared with the existing support vector regression (SVR)-based and convolutional gated recurrent unit (CGRU)-based methods, and improves the correlation coefficient (CC) to 0.96. These advancements underscore the potential of integrating segmentation and adaptive dehazing for enhanced radar-based ocean monitoring under challenging meteorological conditions.
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基于上下文感知分割和迭代去雾的雨天雷达图像波高估计
本研究介绍了一种新的方法来减轻降雨对x波段海洋雷达有效波高(SWH)测量的影响。首先,该方法使用基于变压器的分割模型SegFormer将雷达图像划分为四个不同的区域:清波特征区、雨污染区、低背散射区和风主导雨区。考虑到雨污染区域的雷达波特征明显模糊,该分割步骤识别出具有清晰波特征的区域,确保后续分析更加准确。其次,采用基于梯度标准差(GSD)自适应增强图像清晰度的迭代去雾方法,达到最佳去雾效果。最后,将分割后的去雾极化雷达图像转换成直角坐标系,选取有效区域的子图像,利用SWHFormer模型进行SWH估计。用于测试的雷达数据集是2008年从加拿大哈利法克斯300公里海域的船载台卡雷达收集的。SegFormer模型表现出优越的分割性能,与基于segnet的方法相比,准确率提高了1.3%。此外,迭代去雾方法显著降低了重污染图像中的雾霾效应,在SWH估计的精度和鲁棒性上都优于传统的一次性去雾方法。结果表明,与现有的基于支持向量回归(SVR)和基于卷积门控循环单元(CGRU)的方法相比,结合分割和迭代去雾将SWH估计的均方根偏差(RMSD)从0.42和0.33降低到0.28 m,相关系数(CC)提高到0.96。这些进步强调了在具有挑战性的气象条件下,整合分割和自适应除雾的潜力,以增强基于雷达的海洋监测。
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