Joint identification and tracking of multiple CBRNE clouds based on sparsity pursuit

Huimin Chen, X. Li
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引用次数: 1

Abstract

The evolution of chemical, biological, radiological, nuclear and explosive (CBRNE) clouds depends considerably on its composition. For example, cloud tracking usually relies on a diffusion model of the average atmospheric concentration of the CBRNE material; identification of its composition can benefit greatly from knowledge about the propagation of the compounds. As a result, substance classification and cloud tracking help each other significantly. However, few research efforts consider joint identification and tracking of CBRNE clouds using a network of possibly heterogeneous sensors. This paper deals with such joint identification and tracking. We assume that the chemical composition has a sparse representation in the Raman spectra with a reference library and apply a sparsity pursuit algorithm to adaptively refine the cloud propagation model based on the estimated composition. We demonstrate the benefit of joint identification and tracking of the aggregated clouds when individual substance has a different diffusion coefficient. The results also provide guidelines for selecting an appropriate sensor combination to accurately predict the cloud boundary.
基于稀疏度追踪的多CBRNE云联合识别与跟踪
化学、生物、放射性、核爆炸云的演变在很大程度上取决于其组成。例如,云跟踪通常依赖于CBRNE物质的平均大气浓度的扩散模型;对其组成的鉴定可以从对化合物繁殖的了解中得到很大的帮助。因此,物质分类和云跟踪是相互帮助的。然而,很少有研究工作考虑使用可能异构的传感器网络来联合识别和跟踪CBRNE云。本文对这种联合识别与跟踪进行了研究。我们假设化学成分在拉曼光谱中具有稀疏表示,并使用稀疏追求算法自适应地改进基于估计成分的云传播模型。我们论证了当单个物质具有不同的扩散系数时,联合识别和跟踪聚集云的好处。结果还为选择合适的传感器组合以准确预测云边界提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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