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Towards context aware data fusion: Modeling and integration of situationally qualified human observations to manage uncertainty in a hard plus soft fusion process

机译:迈向情境感知数据融合:建模和整合符合条件的人类观察结果,以在硬加软融合过程中管理不确定性

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This paper presents a framework for characterizing errors associated with different categories of human observation combined with a method for integrating these into a hard + soft data fusion system. Error characteristics of human observers (often referred to as soft data sensors) have typically been artificially generated and lack contextual considerations that in a real-world application can drastically change the accuracy and precision of these characteristics, The proposed framework and method relies on error values that change based upon known and unknown states of qualifying variables empirically shown to affect observation accuracy under different contexts. This approach allows fusion systems to perform uncertainty alignment on data coming from human observers. The preprocessed data yields a more complete and reliable situation assessment when it is processed by data association and stochastic graph matching algorithms. This paper also provides an approach and results of initial validation testing of the proposed methodology. The testing approach leverages error characterization models for several exemplar categories of observation in combination with simulated synthetic data. Results have shown significant performance improvements with respect to both data association and situation assessment fusion processes with an average F-measure improvement of 0.16 and 0.20 for data association and situation assessment respectively. These F-measure improvements are representative of fewer incorrect and missed associations and fewer graph matching results, which then must be considered by human analysts. These benefits are expected to translate into a reduction of the overall cognitive workload facing human analysts in situations where they are tasked with developing and maintaining situational awareness. (C) 2013 Elsevier B.V. All rights reserved.
机译:本文提出了一种用于表征与人类观察的不同类别相关的错误的框架,以及将这些错误集成到硬+软数据融合系统中的方法。人类观察者(通常称为软数据传感器)的错误特征通常是人为产生的,并且缺乏上下文考虑,在现实世界中的应用程序可以极大地改变这些特征的准确性和精度。所提出的框架和方法依赖于错误值根据合格变量的已知和未知状态而发生的变化,根据经验表明会影响不同背景下的观测精度。这种方法允许融合系统对来自人类观察者的数据执行不确定性调整。通过数据关联和随机图匹配算法对预处理后的数据进行处理后,可以进行更完整,更可靠的情况评估。本文还提供了该方法的初始验证测试的方法和结果。该测试方法结合了模拟合成数据,将误差表征模型用于几种典型的观测类别。结果表明,在数据关联和状况评估融合过程方面,性能均得到了显着改善,数据关联和状况评估的F值平均分别提高了0.16和0.20。这些F度量改进表示较少的不正确和遗漏的关联以及较少的图匹配结果,然后人工分析人员必须考虑这些结果。预期这些好处将转化为人类分析师在负责发展和维持态势感知的情况下所面临的总体认知工作量的减少。 (C)2013 Elsevier B.V.保留所有权利。

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