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首页> 外文期刊>Marine Technology Society journal >Texture Features and Unsupervised Learning-Incorporated Rain-Contaminated Region Identification From X-Band Marine Radar Images
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Texture Features and Unsupervised Learning-Incorporated Rain-Contaminated Region Identification From X-Band Marine Radar Images

机译:来自X波段海洋雷达图像的纹理特征和无监督的学习雨污染区域识别

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摘要

A novel method is proposed for identifying rain-contaminated regions in X-band marine radar images. Due to the difference of texture between rain-contaminated and rain-free echoes, a Gabor filter bank and discrete wavelet transform (DWT) are introduced to filter marine radar images and generate texture features. Feature vectors extracted from each pixel of the training samples are input into a clustering model, which is trained using unsupervised learning techniques such as k-means and a self-organizing map (SOM). After distinguishing between rain-free and rain-contaminated clusters, the proposed method is able to cluster pixels into rain-free and rain-contaminated types automatically. Images collected from a shipborne marine radar in a sea trial off the east coast of Canada under rain conditions are utilized to validate the proposed method. Identification results obtained from several clustering models with different combinations of cluster number, texture features, and clustering methods show that rain-contaminated pixels are effectively detected, with an overall identification accuracy of 89.1% for both k-means-based (k = 4) and 2 x 2-neuron SOM-based clustering models.
机译:提出了一种用于识别X波段海洋雷达图像中的雨污染区域的新方法。由于雨污染和无雨回波之间的质地差异,引入了Gabor滤波器组和离散小波变换(DWT)以滤除海洋雷达图像并产生纹理特征。从训练样本的每个像素提取的特征向量被输入到聚类模型中,该模型使用无监督的学习技术(例如K均值和自组织地图)训练(SOM)。在无雨和雨污染的集群区分之后,所提出的方法能够自动地将像素纳入无雨和污染的类型。在雨条件下,从加拿大东海岸的海上试验中收集的图像在雨季条件下,验证了所提出的方法。从多种聚类模型获得的识别结果,具有不同组合的簇数,纹理特征和聚类方法,表明雨污染的像素得到有效地检测到,总体识别精度为39.1%的k均值(k = 4)和2 x 2-neuron SOM的聚类模型。

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