Artificial intelligence for defense applications

IF 1 Q3 ENGINEERING, MULTIDISCIPLINARY
Nathaniel D. Bastian
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引用次数: 1

Abstract

Artificial intelligence (AI) is a set of algorithmic techniques, tools, and technologies that provide machines with the ability to perform tasks that normally require human intelligence – to perceive the world, learn from experience, reason about information, represent knowledge, act, and adapt. Given the multitude of rapid technological advancements in AI, the defense community has emphasized the importance of leveraging these very technologies to be prepared to fight and win the wars of the future. As one of the ways to modernize key capabilities, the defense community has specifically mentioned the need to invest broadly in the military application of AI, including rapid application of commercial breakthroughs, to gain competitive military advantages. To solve some of the most critical problems facing the defense community, the future force requires the ability to converge capabilities from across multiple domains at speeds and scales beyond human cognitive abilities. This special issue is composed of six papers that promote an understanding of AI for defense applications, as well as providing awareness into some of the state-of-theart research and development activities in AI that are applicable to defense applications spanning fraud detection for national security, computer vision for satellite imagery analysis, hidden Markov modeling for the maritime domain, deep learning for radio frequency systems, representation learning for militarily relevant graphs, and robot swarms for military reconnaissance and surveillance. First, the paper by Kerwin and Bastian investigates the national security challenge of predicting fraud, as criminals continually exploit the electronic financial system to defraud consumers and businesses by finding weaknesses in the system, including in audit controls. Their work uses stacked generalizations via meta-learning combined with a resampling methodology particularly useful for the imbalanced fraud data structure to improve fraud detection for national security. Second, the paper by Humphries, Parker, Jonas, Adams, and Clark investigates the problem of quickly and accurately identifying building and road infrastructure via satellite imagery for the execution of tactical military operations in an urban environment. Their work uses an object detection algorithm powered by convolutional neural networks to predict both buildings and road intersections present in an image, as well as use of a contourfinding algorithm for data labeling. Third, the paper by Caelli, Mukerjee, McCabe, and Kirszenblat tackles the problem of integrated sensor and tactical information fusion from a number of sources to enable rapid decision throughput based upon situation awareness for maritime surveillance missions. Their work develops a method using a hidden Markov model to objectively encode, summarize, and analyze airborne maritime surveillance crew activities to gain insights into probabilistic relationships between the attention switching across sensor types and surveyed objects over the entire mission. Fourth, the paper by Clark, Hauser, Headley, and Michaels investigates the radio frequency system problem of automatic modulation classification for situational awareness. Their work examines how useful a synthetically trained system is expected to be when deployed without considering the environment within the synthesis, how training data augmentation can be leveraged for deep learning in the radio frequency domain, and what impact knowledge of degradations to the signal caused by the transmission channel contributes to radio frequency system performance. Fifth, the paper by Lawley, Frey, Mullen and WissnerGross explores the sparse graph representation learning problem for network link prediction and node classification tasks and whole-network reconstruction applicable to militarily relevant graphs such as social and sensor
国防应用的人工智能
人工智能(AI)是一套算法技术、工具和技术,它为机器提供了执行通常需要人类智能的任务的能力——感知世界、从经验中学习、对信息进行推理、表示知识、行动和适应。鉴于人工智能的众多快速技术进步,国防界强调了利用这些技术为未来战争做好准备并赢得战争的重要性。作为关键能力现代化的途径之一,防务界特别提到需要广泛投资人工智能的军事应用,包括快速应用商业突破,以获得竞争性军事优势。为了解决防务界面临的一些最关键的问题,未来的部队需要能够以超越人类认知能力的速度和规模融合来自多个领域的能力。本期特刊由六篇论文组成,这些论文促进了对国防应用中人工智能的理解,并提供了一些适用于国防应用的人工智能的最新研究和开发活动的认识,这些研究和开发活动涵盖了国家安全的欺诈检测、卫星图像分析的计算机视觉、海事领域的隐马尔可夫建模、射频系统的深度学习、军事相关图形的表示学习。机器人蜂群进行军事侦察和监视。首先,Kerwin和Bastian的论文调查了预测欺诈的国家安全挑战,因为犯罪分子不断利用电子金融系统,通过寻找系统中的弱点来欺骗消费者和企业,包括审计控制。他们的工作是通过元学习和重新采样方法进行叠加概括,这种方法对不平衡的欺诈数据结构特别有用,可以提高国家安全的欺诈检测。其次,汉弗莱斯、帕克、乔纳斯、亚当斯和克拉克的论文研究了通过卫星图像快速准确地识别建筑和道路基础设施的问题,以便在城市环境中执行战术军事行动。他们的工作使用了一种由卷积神经网络驱动的对象检测算法来预测图像中出现的建筑物和十字路口,并使用了一种轮廓查找算法来进行数据标记。第三,Caelli、Mukerjee、McCabe和Kirszenblat的论文解决了来自多个来源的集成传感器和战术信息融合问题,以实现基于态势感知的海上监视任务的快速决策吞吐量。他们的工作开发了一种方法,使用隐马尔可夫模型来客观地编码,总结和分析机载海上监视人员的活动,以深入了解整个任务中传感器类型和被调查对象之间的注意力切换之间的概率关系。第四,Clark, Hauser, Headley和Michaels的论文研究了用于态势感知的自动调制分类的射频系统问题。他们的工作考察了在不考虑综合环境的情况下,综合训练系统在部署时的有用性,如何利用训练数据增强在射频域进行深度学习,以及由传输信道引起的信号退化知识对射频系统性能的影响。第五,Lawley, Frey, Mullen和WissnerGross的论文探讨了网络链路预测和节点分类任务的稀疏图表示学习问题,以及适用于社交和传感器等军事相关图的全网重构问题
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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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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