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超越基于稀疏性的目标检测器:一种用于高光谱图像的基于稀疏性与统计的混合检测器。

Beyond the Sparsity-Based Target Detector: A Hybrid Sparsity and Statistics-Based Detector for Hyperspectral Images.

出版信息

IEEE Trans Image Process. 2016 Nov;25(11):5345-5357. doi: 10.1109/TIP.2016.2601268. Epub 2016 Aug 18.

Abstract

Hyperspectral images provide great potential for target detection, however, new challenges are also introduced for hyperspectral target detection, resulting that hyperspectral target detection should be treated as a new problem and modeled differently. Many classical detectors are proposed based on the linear mixing model and the sparsity model. However, the former type of model cannot deal well with spectral variability in limited endmembers, and the latter type of model usually treats the target detection as a simple classification problem and pays less attention to the low target probability. In this case, can we find an efficient way to utilize both the high-dimension features behind hyperspectral images and the limited target information to extract small targets? This paper proposes a novel sparsity-based detector named the hybrid sparsity and statistics detector (HSSD) for target detection in hyperspectral imagery, which can effectively deal with the above two problems. The proposed algorithm designs a hypothesis-specific dictionary based on the prior hypotheses for the test pixel, which can avoid the imbalanced number of training samples for a class-specific dictionary. Then, a purification process is employed for the background training samples in order to construct an effective competition between the two hypotheses. Next, a sparse representation-based binary hypothesis model merged with additive Gaussian noise is proposed to represent the image. Finally, a generalized likelihood ratio test is performed to obtain a more robust detection decision than the reconstruction residual-based detection methods. Extensive experimental results with three hyperspectral data sets confirm that the proposed HSSD algorithm clearly outperforms the state-of-the-art target detectors.

摘要

高光谱图像为目标检测提供了巨大潜力,然而,高光谱目标检测也带来了新的挑战,这使得高光谱目标检测应被视为一个新问题并采用不同的建模方式。许多经典检测器是基于线性混合模型和稀疏性模型提出的。然而,前一种类型的模型无法很好地处理有限端元中的光谱变异性,而后一种类型的模型通常将目标检测视为一个简单的分类问题,较少关注低目标概率。在这种情况下,我们能否找到一种有效的方法来利用高光谱图像背后的高维特征和有限的目标信息来提取小目标呢?本文提出了一种用于高光谱图像目标检测的基于稀疏性的新型检测器,即混合稀疏性与统计检测器(HSSD),它可以有效处理上述两个问题。所提出的算法基于测试像素的先验假设设计了一个特定假设字典,这可以避免类特定字典训练样本数量不均衡的问题。然后,对背景训练样本采用纯化过程,以便在两个假设之间构建有效的竞争。接下来,提出了一种合并加性高斯噪声的基于稀疏表示的二元假设模型来表示图像。最后,进行广义似然比检验以获得比基于重建残差的检测方法更稳健的检测决策。对三个高光谱数据集进行的大量实验结果证实,所提出的HSSD算法明显优于当前最先进的目标检测器。

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