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Small infrared target detection based on kernel principal component analysis

机译:基于核主成分分析的红外小目标检测

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Small infrared target is very difficult to detect due to its own characteristics and complex background. In this paper, we present a small target detection method based on kernel principal component analysis (KPCA). First of all, small target samples are generated by using Gaussian intensity functions. Then a linear PCA is performed in feature space after the small target samples are mapped to a high-dimensional feature space via a nonlinear kernel function, and then the target-enhanced image is obtained by computing the distances between the projection vectors of the training samples and the projection vectors of the each block of the detecting images. Finally, the small infrared target is detected by segmenting the target-enhanced image adaptively. We choose some representative infrared images to evaluate the proposed method, and the experiment results show that the algorithm can detect the small infrared targets effectively.
机译:小型红外目标由于其自身的特性和复杂的背景而很难检测。在本文中,我们提出了一种基于核主成分分析(KPCA)的小型目标检测方法。首先,使用高斯强度函数生成小的目标样本。然后,通过非线性核函数将小的目标样本映射到高维特征空间后,在特征空间中进行线性PCA,然后通过计算训练样本的投影向量之间的距离获得目标增强图像。以及每个检测图像块的投影矢量。最后,通过自适应地分割目标增强图像来检测红外目标。我们选择了一些有代表性的红外图像来评价该方法,实验结果表明该算法可以有效地检测出较小的红外目标。

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