Discriminative metrics for gas classification with spike latency coding

Muhammad Hassan, A. Bermak
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Abstract

A multi-sensor array of the gas sensors is used in order to improve the selectivity of a single sensor and obtain a unique signature. Typically, pattern recognition algorithms are used to find a relationship between the multi-sensor array response and odor class. Theses methods usually accompanied with high computational requirement. Recent results reveal that time of first spike coding exhibits fast and efficient odor identification with reduced computational cost. The objective of this paper is two fold. Firstly, we propose a new probabilistic discriminative metric for assigning an odor class to observed test pattern of first spikes of the sensors in the array. Secondly, we propose the decision boundary criteria for the spike distance algorithm that assesses the spike pattern by comparing its relative distance with training gases. The performance evaluation of these metrics is carried out through experimental data of three different gases. The results show that our proposed metrics display excellent performance as compared to existing pattern recognition algorithms.
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基于脉冲延迟编码的气体分类判别指标
为了提高单个传感器的选择性和获得唯一的特征,采用了多传感器阵列的气体传感器。通常,模式识别算法用于寻找多传感器阵列响应与气味类别之间的关系。这些方法通常具有较高的计算量。最近的研究结果表明,第一尖峰编码时间能够快速有效地识别气味,并且减少了计算成本。本文的目的是双重的。首先,我们提出了一种新的概率判别度量,用于将气味类分配给阵列中传感器的第一个峰值的观察测试模式。其次,我们提出了刺突距离算法的决策边界准则,该算法通过比较刺突与训练气体的相对距离来评估刺突模式。通过三种不同气体的实验数据对这些指标进行了性能评价。结果表明,与现有的模式识别算法相比,我们提出的指标具有优异的性能。
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