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A decision-level fusion scheme using the support vector data description for target detection in hyperspectral imagery

机译:使用支持向量数据描述进行高光谱图像目标检测的决策级融合方案

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Spectral variability remains a challenging problem for target detection in hyperspectral (HS) imagery. In previous work, we developed a target detection scheme using the kernel-based support vector data description (SVDD). We constructed a first-order Markov-based Gaussian model to generate samples to describe the spectral variability of the target class.rnHowever, the Gaussian-generated samples also require selection of the variance parameter σ~2 that dictates the level of variability in the generated target class signatures. In this work, we have investigated the use of decision-level fusionrntechniques for alleviating the problem of choosing a proper value of σ~2 . We have trained a collection of SVDDs withrnunique variance parameters σ~2 for each of the target training sets and have investigated their combination using the traditional AND, OR, and majority vote (MV) decision-level rules. We have inserted target signatures into an urban HS scene with differing levels of spectral variability to explore the performance of the proposed scheme in these scenarios. Experiments show that the MV fusion rule is the best choice, providing relatively low false positive rates (FPR) while yielding high true positive rates (TPR). Detection results show that the proposed SVDD-based decision-level scheme using the MV fusion rule is highly accurate and yields higher true positive rates (TPR) and lower false positive rates (FPR) than the adaptive matched filter (AMF).
机译:对于高光谱(HS)图像中的目标检测而言,光谱可变性仍然是一个具有挑战性的问题。在以前的工作中,我们使用基于内核的支持向量数据描述(SVDD)开发了一种目标检测方案。我们构建了一阶基于Markov的高斯模型来生成样本以描述目标类别的光谱变异性。然而,高斯生成的样本还需要选择方差参数σ〜2,该参数指示生成的变量的水平目标类签名。在这项工作中,我们研究了使用决策级融合技术来缓解选择σ〜2合适值的问题。我们为每个目标训练集训练了具有唯一方差参数σ〜2的SVDD集合,并使用传统的AND,OR和多数表决(MV)决策级规则研究了它们的组合。我们已经将目标签名插入到具有不同频谱可变性水平的城市HS场景中,以探索这些方案在这些情况下的性能。实验表明,MV融合规则是最佳选择,既可以提供相对较低的假阳性率(FPR),又可以提供较高的真实阳性率(TPR)。检测结果表明,所提出的基于MV融合规则的基于SVDD的决策级方案非常准确,与自适应匹配滤波器(AMF)相比,可产生更高的真实率(TPR)和更低的错误率(FPR)。

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