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Time-frequency transform techniques for seabed and buried target classification

机译:海床和地下目标分类的时频变换技术

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An approach for processing sonar signals with the ultimate goal of ocean bottom sediment classification and underwater buried target classification is presented in this paper. Work reported for sediment classification is based on sonar data collected by one of the AN/AQS-20's sonars. Synthetic data, simulating data acquired by parametric sonar, is employed for target classification. The technique is based on the Fractional Fourier Transform (FrFT), which is better suited for sonar applications because FrFT uses linear chirps as basis functions. In the first stage of the algorithm, FrFT requires finding the optimum order of the transform that can be estimated based on the properties of the transmitted signal. Then, the magnitude of the Fractional Fourier transform for optimal order applied to the backscattered signal is computed in order to approximate the magnitude of the bottom impulse response. Joint time-frequency representations of the signal offer the possibility to determine the time-frequency configuration of the signal as its characteristic features for classification purposes. The classification is based on singular value decomposition of the time-frequency distributions applied to the impulse response. A set of the largest singular values provides the discriminant features in a reduced dimensional space. Various discriminant functions are employed and the performance of the classifiers is evaluated. Of particular interest for underwater under-sediment classification applications are long targets such as cables of various diameters, which need to be identified as different from other strong reflectors or point targets. Synthetic test data are used to exemplify and evaluate the proposed technique for target classification. The synthetic data simulates the impulse response of cylindrical targets buried in the seafloor sediments. Results are presented that illustrate the processing procedure. An important characteristic of this method is that good classification accuracy of an unknown target is achieved having only the response of a known target in the free field. The algorithm shows an accurate way to classify buried objects under various scenarios, with high probability of correct classification.
机译:提出了一种以海底沉积物分类和水下掩埋目标分类为最终目标的声纳信号处理方法。报告的沉积物分类工作基于AN / AQS-20之一声纳收集的声纳数据。模拟数据通过参数声纳获取的数据用于目标分类。该技术基于分数阶傅立叶变换(FrFT),它更适合于声纳应用,因为FrFT使用线性chi作为基函数。在算法的第一阶段,FrFT需要找到可以根据传输信号的属性进行估计的最佳变换顺序。然后,计算应用于反向散射信号的最佳阶数的分数阶傅里叶变换的幅度,以便近似于底部脉冲响应的幅度。信号的联合时频表示提供了将信号的时频配置确定为其特征的可能性,以用于分类。该分类基于应用于脉冲响应的时频分布的奇异值分解。一组最大的奇异值在减少的维空间中提供了判别式特征。使用各种判别函数,并评估分类器的性能。水下水下沉积物分类应用特别令人感兴趣的是长目标,例如各种直径的电缆,需要将其识别为与其他强反射器或点目标不同。综合测试数据用于例示和评估所提出的目标分类技术。综合数据模拟了埋在海底沉积物中的圆柱形目标的脉冲响应。给出了说明加工过程的结果。该方法的重要特征在于,仅在自由场中仅具有已知目标的响应,即可实现未知目标的良好分类精度。该算法展示了一种在各种情况下对掩埋物体进行分类的准确方法,具有正确分类的高概率。

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