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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >A Nonlinear Sparse Representation-Based Binary Hypothesis Model for Hyperspectral Target Detection
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A Nonlinear Sparse Representation-Based Binary Hypothesis Model for Hyperspectral Target Detection

机译:基于非线性稀疏表示的二元假设模型用于高光谱目标检测

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摘要

The sparsity model has been employed for hyperspectral target detection and has been proved to be very effective when compared to the traditional linear mixture model. However, the state-of-art sparsity models usually represent a test sample via a sparse linear combination of both target and background training samples, which does not result in an efficient representation of a background test sample. In this paper, a sparse representation-based binary hypothesis (SRBBH) model employs more appropriate dictionaries with the binary hypothesis model to sparsely represent the test sample. Furthermore, the nonlinear issue is addressed in this paper, and a kernel method is employed to resolve the detection issue in complicated hyperspectral images. In this way, the kernel SRBBH model not only takes the nonlinear endmember mixture into consideration, but also fully exploits the sparsity model by the use of more reasonable dictionaries. The recovery process leads to a competition between the background and target subspaces, which is effective in separating the targets from the background, thereby enhancing the detection performance.
机译:稀疏模型已用于高光谱目标检测,并且与传统的线性混合模型相比已被证明非常有效。但是,最新的稀疏模型通常通过目标和背景训练样本的稀疏线性组合来表示测试样本,这不会导致背景测试样本的有效表示。在本文中,基于稀疏表示的二元假设(SRBBH)模型使用了更合适的字典,并且具有二元假设模型来稀疏表示测试样本。此外,本文解决了非线性问题,并采用核方法解决了复杂高光谱图像中的检测问题。这样,内核SRBBH模型不仅考虑了非线性末端成员混合,而且还通过使用更合理的字典来充分利用稀疏模型。恢复过程导致背景子空间与目标子空间之间的竞争,这有效地将目标与背景分离,从而提高了检测性能。

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