首页> 外文期刊>Journal of marine science and technology >A LINEARLY CONSTRAINED SIGNAL SUBSPACE PROJECTION APPROACH DEVELOPED TO DETECT TARGETS IN HYPERSPECTRAL IMAGES
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A LINEARLY CONSTRAINED SIGNAL SUBSPACE PROJECTION APPROACH DEVELOPED TO DETECT TARGETS IN HYPERSPECTRAL IMAGES

机译:一种线性约束信号子空间投影方法,用于检测高光谱图像中的目标

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Hyperspectral images have been widely used for target detection. In general, target signatures should be known a priori for filter-based detection methods. However, the uncertainty of target signatures caused by the influence of atmospheric interference or other random noise degrades the detection performance. Therefore, developing a robust detection method is crucial in hyperspectral image analysis. In this study, a linearly constrained signal subspace projection approach for target detection is proposed. Instead of using a single constraint on target detection, an optimal filter with multiple constraints is designed using signal subspace projection (SSP). The SSP approach fully exploits the orthogonal property of two orthogonal subspaces; one denotes a signal subspace that contains desired targets and undesired interference, and the other denotes a noise subspace, which is orthogonal to signal subspace. By projecting the weights of the detection filter on the signal subspace, the proposed SSP reduces estimation errors in target signatures and alleviates the performance degradation caused by the uncertainty of target signatures. The SSP approach can detect desired targets, suppress undesired targets, and minimize interference effects. In this paper, three methods are provided for selecting multiple constraints of the desired target: K-means, principal eigenvectors, and endmember extraction techniques. The simulation results show that the proposed SSP with multiple constraints on the desired target selected using K-means has superior detection performance. Further-more, the proposed SSP with multiple constraints is less sensitive to the uncertainty of target signatures.
机译:高光谱图像已被广泛用于目标检测。通常,对于基于过滤器的检测方法,目标签名应该是先验的。但是,由于大气干扰或其他随机噪声的影响而导致的目标签名的不确定性会降低检测性能。因此,开发可靠的检测方法对于高光谱图像分析至关重要。在这项研究中,提出了一种用于目标检测的线性约束信号子空间投影方法。代替对目标检测使用单个约束,使用信号子空间投影(SSP)设计了具有多个约束的最佳滤波器。 SSP方法充分利用了两个正交子空间的正交特性。一个表示包含期望目标和不期望干扰的信号子空间,另一个表示与信号子空间正交的噪声子空间。通过将检测滤波器的权重投影到信号子空间上,提出的SSP减少了目标签名中的估计误差,并减轻了由目标签名的不确定性导致的性能下降。 SSP方法可以检测所需目标,抑制不想要的目标,并使干扰影响最小化。在本文中,提供了三种用于选择所需目标的多个约束的方法:K均值,主特征向量和端成员提取技术。仿真结果表明,所提出的SSP对使用K均值选择的期望目标具有多个约束,具有出色的检测性能。此外,所提出的具有多个约束的SSP对目标签名的不确定性不太敏感。

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