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Artificial Intelligence and Machine Learning for Future Army Applications

机译:人工智能和机器学习在未来陆军中的应用

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Based on current trends in artificial intelligence (AI) and machine learning (ML), we provide an overview of novel algorithms intended to address Army-specific needs for increased operational tempo and autonomy for ground robots in unexplored, dynamic, cluttered, contested, and sparse data environments. This paper discusses some of the motivating factors behind US Army Research in AI and ML and provides a survey of a subset of the US Army Research Laboratory's (ARL) Computational and Information Sciences Directorate's (CISD) recent research in online, nonparametric learning that quickly adapts to variable underlying distributions in sparse exemplar environments, as well as a technique for unsupervised semantic scene labeling that continuously learns and adapts semantic models discovered within a data stream. We also look at a newly developed algorithm that leverages human input to help intelligent agents learn more rapidly and a novel research study working to discover foundational knowledge that is required for humans and robots to communicate via natural language. Finally we discuss a method for finding chains of reasoning with incomplete information using semantic vectors. The specific research exemplars provide approaches for overcoming the specific shortcomings of commercial AI and ML methods as well as the brittleness of current commercial techniques such that these methods can be enhanced and adapted so as to be applicable to army relevant scenarios.
机译:基于人工智能(AI)和机器学习(ML)的当前趋势,我们提供了新颖的算法概述,旨在满足陆军特定需求,以提高地面机器人在未经探索,动态,混乱,竞争和竞争中的运行速度和自主性稀疏数据环境。本文讨论了美国陆军AI和ML研究背后的一些动机因素,并提供了对美国陆军研究实验室(ARL)计算和信息科学总署(CISD)最近在在线,非参数学习中的快速研究适应性研究的子集的调查。稀疏示例环境中的变量基础分布,以及无监督语义场景标记的技术,该技术不断学习和适应在数据流中发现的语义模型。我们还将研究一种新开发的算法,该算法利用人工输入来帮助智能主体更快地学习,并且进行新颖的研究以发现人类和机器人通过自然语言进行交流所需的基础知识。最后,我们讨论了一种使用语义向量查找具有不完整信息的推理链的方法。具体的研究范例为克服商业AI和ML方法的特定缺点以及当前商业技术的脆弱性提供了方法,从而可以增强和调整这些方法,以适用于与军队有关的场景。

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