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首页> 外文期刊>EURASIP journal on advances in signal processing >Fusion of Local Statistical Parameters for Buried Underwater Mine Detection in Sonar Imaging
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Fusion of Local Statistical Parameters for Buried Underwater Mine Detection in Sonar Imaging

机译:声纳成像中水下埋藏地雷探测的局部统计参数融合

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摘要

Detection of buried underwater objects, and especially mines, is a current crucial strategic task. Images provided by sonar systems allowing to penetrate in the sea floor, such as the synthetic aperture sonars (SASs), are of great interest for the detection and classification of such objects. However, the signal-to-noise ratio is fairly low and advanced information processing is required for a correct and reliable detection of the echoes generated by the objects. The detection method proposed in this paper is based on a data-fusion architecture using the belief theory. The input data of this architecture are local statistical characteristics extracted from SAS data corresponding to the first-, second-, third-, and fourth-order statistical properties of the sonar images, respectively. The interest of these parameters is derived from a statistical model of the sonar data. Numerical criteria are also proposed to estimate the detection performances and to validate the method.
机译:检测埋在水下的物体,特别是地雷,是当前的关键战略任务。由声纳系统允许穿透海底的图像,例如合成孔径声纳(SAS),对于此类物体的检测和分类非常感兴趣。但是,信噪比相当低,并且需要正确的信息处理才能正确,可靠地检测物体产生的回声。本文提出的检测方法基于使用信念理论的数据融合架构。该体系结构的输入数据是分别从分别对应于声纳图像的一阶,二阶,三阶和四阶统计特性的SAS数据中提取的局部统计特性。这些参数的兴趣来自声纳数据的统计模型。还提出了数字标准来估计检测性能并验证该方法。

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