Haussdorff and hellinger for colorimetric sensor array classification

T. S. Alstrøm, B. S. Jensen, Mikkel N. Schmidt, N. Kostesha, J. Larsen
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Abstract

Development of sensors and systems for detection of chemical compounds is an important challenge with applications in areas such as anti-terrorism, demining, and environmental monitoring. A newly developed colorimetric sensor array is able to detect explosives and volatile organic compounds; however, each sensor reading consists of hundreds of pixel values, and methods for combining these readings from multiple sensors must be developed to make a classification system. In this work we examine two distance based classification methods, K-Nearest Neighbor (KNN) and Gaussian process (GP) classification, which both rely on a suitable distance metric. We evaluate a range of different distance measures and propose a method for sensor fusion in the GP classifier. Our results indicate that the best choice of distance measure depends on the sensor and the chemical of interest.
开发用于检测化合物的传感器和系统是反恐、排雷和环境监测等领域应用的重要挑战。新开发的比色传感器阵列能够检测爆炸物和挥发性有机化合物;然而,每个传感器读数由数百个像素值组成,并且必须开发将来自多个传感器的这些读数结合起来的方法来构建分类系统。在这项工作中,我们研究了两种基于距离的分类方法,k -最近邻(KNN)和高斯过程(GP)分类,它们都依赖于合适的距离度量。我们评估了一系列不同的距离度量,并提出了一种GP分类器中的传感器融合方法。我们的结果表明,距离测量的最佳选择取决于传感器和感兴趣的化学物质。
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