情景理解的深度学习

Supriyo Chakraborty, A. Preece, M. Alzantot, Tianwei Xing, Dave Braines, M. Srivastava
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引用次数: 15

摘要

情境理解(SU)需要洞察力(准确感知现有情况的能力)和远见(预测现有情况未来可能发展的能力)的结合。SU涉及信息融合、模型表示和推理。通常,在融合过程中必须利用异构数据源:通常包括硬数据产品和软数据产品。在联合背景下,数据和处理资源也将被分配,并受到信息共享的限制。在SU过程中,通常需要一个人参与到循环中,提供关键输入和指导,并以一种在处理过程中需要一定程度透明度的方式解释输出:系统不能是“黑盒子”。在本文中,我们从融合、时间、分布和人类需求的角度描述了联盟态势理解(CSU)问题。目前,人们对处理硬数据和软数据的深度学习(DL)方法非常感兴趣。我们分析了与CSU的这些要求相关的DL的最新技术,并确定了目前有很大希望的领域和关键差距。
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Deep learning for situational understanding
Situational understanding (SU) requires a combination of insight — the ability to accurately perceive an existing situation — and foresight — the ability to anticipate how an existing situation may develop in the future. SU involves information fusion as well as model representation and inference. Commonly, heterogenous data sources must be exploited in the fusion process: often including both hard and soft data products. In a coalition context, data and processing resources will also be distributed and subjected to restrictions on information sharing. It will often be necessary for a human to be in the loop in SU processes, to provide key input and guidance, and to interpret outputs in a way that necessitates a degree of transparency in the processing: systems cannot be “black boxes”. In this paper, we characterize the Coalition Situational Understanding (CSU) problem in terms of fusion, temporal, distributed, and human requirements. There is currently significant interest in deep learning (DL) approaches for processing both hard and soft data. We analyze the state-of-the-art in DL in relation to these requirements for CSU, and identify areas where there is currently considerable promise, and key gaps.
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