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Hyperspectral chemical plume detection algorithms based on multidimensional iterative filtering decomposition

机译:基于多维迭代滤波分解的高光谱化学羽流检测算法

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摘要

Chemicals released in the air can be extremely dangerous for human beings and the environment. Hyperspectral images can be used to identify chemical plumes, however the task can be extremely challenging. Assuming we know a priori that some chemical plume, with a known frequency spectrum, has been photographed using a hyperspectral sensor, we can use standard techniques such as the so-called matched filter or adaptive cosine estimator, plus a properly chosen threshold value, to identify the position of the chemical plume. However, due to noise and inadequate sensing, the accurate identification of chemical pixels is not easy even in this apparently simple situation. In this paper, we present a post-processing tool that, in a completely adaptive and data-driven fashion, allows us to improve the performance of any classification methods in identifying the boundaries of a plume. This is done using the multidimensional iterative filtering (MIF) algorithm (Cicone et al. 2014 (); Cicone & Zhou 2015 ()), which is a non-stationary signal decomposition method like the pioneering empirical mode decomposition method (Huang et al. 1998 Proc. R. Soc. Lond. A 454, 903. ()). Moreover, based on the MIF technique, we propose also a pre-processing method that allows us to decorrelate and mean-centre a hyperspectral dataset. The cosine similarity measure, which often fails in practice, appears to become a successful and outperforming classifier when equipped with such a pre-processing method. We show some examples of the proposed methods when applied to real-life problems.
机译:释放在空气中的化学物质对人类和环境都极为危险。高光谱图像可用于识别化学羽状流,但是该任务可能极具挑战性。假设我们先验地知道已经使用高光谱传感器拍摄了具有已知频谱的某些化学羽流,则可以使用诸如匹配滤波器或自适应余弦估计器之类的标准技术,再加上适当选择的阈值,来确定化学羽的位置。但是,由于噪声和感应不足,即使在这种看似简单的情况下,也不容易准确识别化学像素。在本文中,我们提出了一种后处理工具,该工具以完全自适应和数据驱动的方式,使我们能够提高任何分类方法在识别羽流边界方面的性能。这是使用多维迭代滤波(MIF)算法完成的(Cicone等人2014(); Cicone&Zhou 2015()),这是一种非平稳的信号分解方法,类似于开拓性的经验模式分解方法(Huang等人。 1998 Proc。R. Soc。Lond。A 454,903.()。此外,基于MIF技术,我们还提出了一种预处理方法,该方法允许我们对高光谱数据集进行去相关和均值中心化。余弦相似度度量在实践中通常会失败,当配备了这种预处理方法后,它似乎已成为一种成功且性能优异的分类器。我们展示了一些应用于实际问题的拟议方法的例子。

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