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Saliency-Driven Oil Tank Detection Based on Multidimensional Feature Vector Clustering for SAR Images

机译:基于多维特征向量聚类的SAR图像显着性油箱检测

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摘要

A novel saliency-driven oil tank detection method based on multidimensional feature vector clustering (MFVC) is proposed in this letter for synthetic aperture radar (SAR) images. There are three major contributions: 1) a specially designed MFVC method, which is suitable for SAR images without true colors, is employed to detect oil tanks roughly by saliency analysis. Five important complementary features, including intensity, texture, structure, and 2-D coordinates, form a 5-D vector, and then an unsupervised strategy is employed for clustering the 5-D feature vectors to acquire the saliency map; 2) For accurate location, the shape limit coefficient is added to the original active contour model to extract contours of top surfaces; and 3) according to the relations of top, bottom, and the brightest arch, bottoms of oil tanks are computed precisely. Experiments are conducted in two aspects: evaluation for saliency analysis, and for bottom location. Results show that the MFVC method outperforms competing methods in maintaining complete oil tanks and accurate boundaries, and removing the background clutter as much as possible.
机译:本文针对合成孔径雷达(SAR)图像,提出了一种基于多维特征向量聚类(MFVC)的显着性驱动油箱检测方法。主要有以下三个方面的贡献:1)一种特殊设计的MFVC方法,适用于没有真实色彩的SAR图像,通过显着性分析粗略地检测出油箱。五个重要的互补特征(包括强度,纹理,结构和2-D坐标)形成一个5-D向量,然后采用无监督策略对5-D特征向量进行聚类以获取显着性图。 2)为了精确定位,将形状极限系数添加到原始活动轮廓模型中,以提取顶面轮廓; 3)根据顶部,底部和最亮拱形的关系,精确计算出油箱的底部。实验从两个方面进行:显着性分析评估和底部定位。结果表明,MFVC方法在保持完整的油箱和准确的边界以及尽可能消除背景混乱方面优于竞争方法。

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