Synthetic training sets for the development of discriminant functions for the detection of volatile organic compounds from passive infrared remote sensing data
Abstract
A novel synthetic data generation methodology is described for use in the development of pattern recognition classifiers that are employed for the automated detection of volatile organic compounds (VOCs) during infrared remote sensing measurements. The approach used is passive