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A Kernel-Based Nonparametric Regression Method for Clutter Removal in Infrared Small-Target Detection Applications

机译:基于核的非参数回归方法在红外小目标检测中的杂波去除

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摘要

Small-target detection in infrared imagery with a complex background is always an important task in remote-sensing fields. Complex clutter background usually results in serious false alarm in target detection for low contrast of infrared imagery. In this letter, a kernel-based nonparametric regression method is proposed for background prediction and clutter removal, furthermore applied in target detection. First, a linear mixture model is used to represent each pixel of the observed infrared imagery. Second, adaptive detection is performed on local regions in the infrared image by means of kernel-based nonparametric regression and two-parameter constant false alarm rate (CFAR) detector. Kernel regression, which is one of the nonparametric regression approaches, is adopted to estimate complex clutter background. Then, CFAR detection is performed on “pure” target-like region after estimation and removal of clutter background. Experimental results prove that the proposed algorithm is effective and adaptable to small-target detection under a complex background.
机译:背景复杂的红外图像中的小目标检测一直是遥感领域的重要任务。复杂的杂波背景通常会在目标检测中导致严重的误报,从而降低红外图像的对比度。本文提出了一种基于核的非参数回归方法进行背景预测和杂波去除,并将其应用于目标检测。首先,线性混合模型用于表示观察到的红外图像的每个像素。其次,借助于基于核的非参数回归和两参数恒定误报率(CFAR)检测器,对红外图像中的局部区域执行自适应检测。核回归是非参数回归方法之一,用于估计复杂的杂波背景。然后,在估计并去除杂波背景后,对“纯”目标样区域执行CFAR检测。实验结果证明,该算法是有效的,适用于复杂背景下的小目标检测。

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