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Hyperspectral trace gas detection using the wavelet packet transform

机译:小波包变换的高光谱痕量气体检测

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A method for trace gas detection in hyperspectral data is demonstrated using the wavelet packet transform. This new method, the Wavelet Packet Subspace (WPS), applies the wavelet packet transform and selects a best basis for pattern matching. The wavelet packet transform is an extension of the wavelet transform, which fully decomposes a signal into a library of wavelet packet bases. Application of the wavelet packet transform to hyperspectral data for the detection of trace gases takes advantage of the ability of the wavelet transform to locate spectral features in both scale and location. By analyzing the wavelet packet tree of specific gas, nodes of the tree are selected which represent an orthogonal best basis. The best basis represents the significant spectral features of that gas. This is then used to identify pixels in the scene using existing matching algorithms such as spectral angle or matched filter. Using data from the Airborne Hyperspectral Imager (AHI), this method is compared to traditional matched filter detection methods. Initial results demonstrate a promising wavelet packet subspace technique for hyperspectral trace gas detection applications.
机译:使用小波包变换演示了一种用于高光谱数据中痕量气体检测的方法。小波包子空间(WPS)这一新方法应用了小波包变换,并为模式匹配选择了最佳基础。小波包变换是小波变换的扩展,可将信号完全分解为小波包库。将小波包变换应用于高光谱数据以检测痕量气体利用了小波变换在比例尺和位置上定位光谱特征的能力。通过分析特定气体的小波包树,选择代表正交最佳基础的树节点。最好的依据代表了该气体的重要光谱特征。然后使用现有的匹配算法(例如光谱角度或匹配滤波器)将其用于识别场景中的像素。利用机载高光谱成像仪(AHI)的数据,将该方法与传统的匹配滤波器检测方法进行了比较。初步结果证明了一种用于高光谱痕量气体检测应用的有希望的小波包子空间技术。

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