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Passive Airborne Fourier Transform Infrared Remote Detection of Methanol by Use of Wavelet Analysis as A Feature Extraction Method

机译:通过使用小波分析作为特征萃取方法,被动空气传播的傅立叶变换红外远程检测甲醇

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摘要

Wavelet analysis was evaluated as a data preprocessing tool in the construction of automated classifiers for the detection of volatile organic compounds from passive Fourier transform infrared remote sensing data collected in a downward-looking mode from an aircraft platform. The discrete wavelet transform was applied to single-beam spectra and patterns were formed with either the wavelet coefficients directly or with spectra reconstructed with selected resolution levels of the wavelet decomposition. Automated classifiers were constructed with support vector machines (SVM) and used to detect releases of methanol from an industrial site. A key issue in this work was the desire to use data collected during controlled experiments on the ground to train the SVM classifiers. Spectral backgrounds in these ground-collected data are different than those encountered as the aircraft flies, however, and the development of successful classification models requires spectral preprocessing to suppress background signatures. Biorthogonal wavelets were used to generate patterns and resulted in SVM models that produced no missed methanol detections and false detection rates of less than 0.1% when applied to prediction data not used in the development of the model. The SVM classifiers constructed with wavelet processing were compared to one based on unprocessed spectra and also to one computed with spectra preprocessed with Butterworth high-pass digital filters.
机译:在从飞行器平台上从飞机平台上从向上的模式中收集的被动傅里叶变换红外遥感数据的自动分类器进行自动分类器的构造中,评估为数据预处理工具的数据预处理工具。将离散小波变换应用于单梁谱谱,并且用直接或用小波分解的所选分辨率电平重建的小波系数形成图案。自动分类器由支持载体​​机(SVM)构建,并用于检测来自工业部位的释放甲醇。这项工作中的一个关键问题是希望在地面上进行控制实验期间收集的数据来培训SVM分类器。然而,这些地面收集的数据中的光谱背景与飞机蝇蝇遇到的数据不同,并且成功分类模型的发展需要光谱预处理来抑制背景签名。双正态小波用于产生模式,并导致SVM模型,当应用于模型开发的预测数据时,未错过甲醇检测和误报率小于0.1%。将用小波处理构成的SVM分类器与基于未处理的光谱相比,并且还与用PERTCHEASEDED BATTERWORTH高通数字滤波器计算的一个计算。

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