延迟编码气体识别的实验评价

Jaber Hassan J. Al Yamani, F. Boussaïd, A. Bermak, D. Martinez
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引用次数: 0

摘要

商业气体识别系统使用先进的计算密集型信号处理/模式识别算法来识别气体并区分它们。这严重影响了此类系统的规模和成本,也限制了它们的大规模部署。生物启发气体识别方案有可能大大简化气体识别任务,使低成本和低功耗微型气体系统的出现成为可能。在本文中,我们提出了一种生物启发延迟编码用于气体识别的实验评估。采用四种常用的模式识别算法,即K近邻(KNN)、神经网络(多层感知器(MLP)、径向基函数(RBF))和密度模型(高斯混合模型(GMM)),对这种仿生方法的性能进行了评估。报告的实验结果表明,延迟编码即使不比计算密集型的模式识别技术更好,也可以表现得很好。
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Experimental evaluation of latency coding for gas recognition
Commercial gas recognition systems use advanced computationally intensive signal processing/pattern recognition algorithms to identify gases and discriminate between them. This severely impacts on the size and cost of such systems but also limits their large-scale deployment. Biologically-inspired gas recognition schemes have the potential to greatly simplify the task of gas recognition, enabling the advent of low cost and low power miniature gas systems. In this paper, we present an experimental evaluation of bio-inspired latency coding for gas recognition. The performance of this bio-inspired approach was evaluated against four commonly used pattern recognition algorithms, namely K Nearest Neighbors (KNN), neural networks (Multi-Layer Perceptron (MLP), Radial Basis Function (RBF)) and density models (Gaussian Mixture Models (GMM). Reported experimental results suggest that latency coding could perform as well if not better than more computationally intensive pattern recognition techniques.
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