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Spectral Quality Requirements for Effluent Identification

机译:废水鉴定的光谱质量要求

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We consider the problem of remotely identifying gaseous materials using passive sensing of long-wave infrared (LWIR) spectral features at hyperspectral resolution. Gaseous materials are distinguishable in the LWIR because of their unique spectral fingerprints. A sensor degraded in capability by noise or limited spectral resolution, however, may be unable to positively identify contaminants, especially if they are present in low concentrations or if the spectral library used for comparisons includes materials with similar spectral signatures. This paper will quantify the relative importance of these parameters and express the relationships between them in a functional form which can be used as a rule of thumb in sensor design or in assessing sensor capability for a specific task. This paper describes the simulation of remote sensing data containing a gas cloud. In each simulation, the spectra are degraded in spectral resolution and through the addition of noise to simulate spectra collected by sensors of varying design and capability. We form a trade space by systematically varying the number of sensor spectral channels and signal-to-noise ratio over a range of values. For each scenario, we evaluate the capability of the sensor for gas identification by computing the ratio of the F-statistic for the truth gas to the same statistic computed over the rest of the library. The effect of the scope of the library is investigated as well, by computing statistics on the variability of the identification capability as the library composition is varied randomly.
机译:我们考虑在高光谱分辨率下使用长波红外(LWIR)光谱特征的被动感应来远程识别气态物质的问题。气态物质由于其独特的光谱指纹而在LWIR中是可区分的。但是,由于噪声或有限的光谱分辨率而使性能降低的传感器可能无法肯定地识别出污染物,尤其是当污染物以低浓度存在或用于比较的光谱库包括具有相似光谱特征的材料时。本文将量化这些参数的相对重要性,并以功能形式表达它们之间的关系,这些功能形式可以用作传感器设计或评估特定任务的传感器性能的经验法则。本文描述了包含气体云的遥感数据的模拟。在每个模拟中,通过降低噪声以模拟由设计和能力各不相同的传感器收集的光谱,从而使光谱的光谱分辨率降低。我们通过在一定范围内系统地改变传感器光谱通道的数量和信噪比,形成一个交易空间。对于每种情况,我们通过计算真气的F统计量与库其余部分计算出的相同统计量之比,来评估传感器进行气体识别的能力。还通过计算统计信息来确定图书馆范围的影响,该统计信息是随着图书馆组成的随机变化而产生的识别能力的变化。

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