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Data representation and feature selection for colorimetric sensor arrays used as explosives detectors

机译:用于爆炸物探测器的比色传感器阵列的数据表示和特征选择

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Within the framework of the strategic research project Xsense at the Technical University of Denmark, we are developing a colorimetric sensor array which can be useful for detection of explosives like DNT, TNT, HMX, RDX and TATP and identification of volatile organic compounds in the presence of water vapor in air. In order to analyze colorimetric sensors with statistical methods, the sensory output must be put into numerical form suitable for analysis. We present new ways of extracting features from a colorimetric sensor and determine the quality and robustness of these features using machine learning classifiers. Sensors, and in particular explosive sensors, must not only be able to classify explosives, they must also be able to measure the certainty of the classifier regarding the decision it has made. This means there is a need for classifiers that not only give a decision, but also give a posterior probability about the decision. We will compare K-nearest neighbor, artificial neural networks and sparse logistic regression for colorimetric sensor data analysis. Using the sparse solutions we perform feature selection and feature ranking and compare to Gram-Schmidt orthogonalization.
机译:在丹麦技术大学XSense战略研究项目的框架内,我们正在开发比色传感器阵列,可用于检测DNT,TNT,HMX,RDX和TATP等爆炸物,以及在存在下识别挥发性有机化合物空气中的水蒸气。为了用统计方法分析比色传感器,必须将感官输出投入适合于分析的数字形式。我们提出了从比色传感器提取功能的新方法,并使用机器学习分类器确定这些功能的质量和稳健性。传感器,特别是爆炸性传感器,不仅能够对爆炸物进行分类,他们还必须能够衡量分类器的确定性,就它已经做出了决定。这意味着需要对不仅提供决定的分类器,而且还提供关于该决定的后验概率。我们将比较色谱传感器数据分析的K-Collest邻居,人工神经网络和稀疏逻辑回归。使用稀疏解决方案,我们执行功能选择和特征排序并与Gram-Schmidt正交化进行比较。

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