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Detecting of Multi-Dim-Small-Target in Sea or Sky Background Based on Higher-Order Cumulants and Wavelet

机译:基于高阶累积物和小波的海或天空背景中的多重小目标检测

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This paper describes a technology of multi-dim-small-target detection. Two-dimensional (2-D) adaptive filtering and multi-dim-small-target segmentation algorithm is suggested to enhance 2-D signals of small spatial extent embedded in additive white Gaussian noise(AWGN) and detect multi-dim-small-target in complex background. The coefficients of the adaptive filter converge to a special 2-D slice of the fourth-order cumulant function of the input signal. The 2-D filter is called the 2-D cumulant-based adaptive enhancer (2DCBAE). And the dim-small-target segmentation algorithm is combining some theory, such as the wavelet energy transformation, image reconstruction, data fusion and self-adaptive threshold segmentation.
机译:本文介绍了多重小型目标检测技术。建议二维(2-D)自适应滤波和多重小型目标分割算法,以增强嵌入在附加白色高斯噪声(AWGN)中的小空间范围的2-D信号,并检测多昏暗小目标在复杂的背景中。自适应滤波器的系数会聚到输入信号的四阶累积函数的特殊2-D切片。 2-D滤波器称为基于2-D累积的自适应增强器(2dcbae)。并且DIM-小目标分割算法是组合一些理论,例如小波能量变换,图像重建,数据融合和自适应阈值分割。

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