Multisource Deep Learning for Situation Awareness

被引:2
|
作者
Blasch, Erik [1 ]
Liu, Zheng [2 ]
Zheng, Yufeng [3 ]
Majumder, Uttam [4 ]
Aved, Alex [4 ]
Zulch, Peter [4 ]
机构
[1] Air Force Off Sci Res, Arlington, VA 22203 USA
[2] Univ British Columbia Okanagan, Kelowna, BC, Canada
[3] Alcorn StateUniv, Lorman, MS USA
[4] Air Force Res Lab, Informat Directorate, Rome, NY USA
来源
关键词
Information Fusion; Deep Learning; Image Fusion; Situational Assessment; Knowledge Representation; User Refinement; RESOURCE-MANAGEMENT; INFORMATION; CLASSIFICATION;
D O I
10.1117/12.2519236
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
The resurgence of interest in artificial intelligence (AI) stems from impressive deep learning (DL) performance such as hierarchical supervised training using a Convolutional Neural Network (CNN). Current DL methods should provide contextual reasoning, explainable results, and repeatable understanding that require evaluation methods. This paper discusses DL techniques using multimodal (or multisource) information that extend measures of performance (MOP). Examples of joint multi-modal learning include imagery and text, video and radar, and other common sensor types. Issues with joint multimodal learning challenge many current methods and care is needed to apply machine learning methods. Results from Deep Multimodal Image Fusion (DMIF) using Electro-optical and infrared data demonstrate performance modeling based on distance to better understand DL robustness and quality to provide situation awareness.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Tailoring a cognitive model for situation awareness using machine learning
    Richard Koopmanschap
    Mark Hoogendoorn
    Jan Joris Roessingh
    Applied Intelligence, 2015, 42 : 36 - 48
  • [32] Self-regulated learning with approximate reasoning and situation awareness
    D'Aniello, Giuseppe
    Gaeta, Angelo
    Gaeta, Matteo
    Tomasiello, Stefania
    JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING, 2018, 9 (01) : 151 - 164
  • [34] Associative learning of vessel motion patterns for maritime situation awareness
    Bomberger, Neil A.
    Rhodes, Bradley J.
    Seibert, Michael
    Waxman, Allen M.
    2006 9TH INTERNATIONAL CONFERENCE ON INFORMATION FUSION, VOLS 1-4, 2006, : 729 - 736
  • [35] Tailoring a cognitive model for situation awareness using machine learning
    Koopmanschap, Richard
    Hoogendoorn, Mark
    Roessingh, Jan Joris
    APPLIED INTELLIGENCE, 2015, 42 (01) : 36 - 48
  • [36] Self-regulated learning with approximate reasoning and situation awareness
    Giuseppe D’Aniello
    Angelo Gaeta
    Matteo Gaeta
    Stefania Tomasiello
    Journal of Ambient Intelligence and Humanized Computing, 2018, 9 : 151 - 164
  • [37] Design of Machine Learning Method for Network Security Situation Awareness
    Li, Wei
    Jiang, Xuefeng
    Le, Huan
    Miao, Zhenmin
    Shao, Hui
    International Journal of Network Security, 2024, 26 (05): : 812 - 821
  • [38] Removal of multisource noise in airborne electromagnetic data based on deep learning
    Wu, Xin
    Xue, Guoqiang
    He, Yiming
    Xue, Junjie
    GEOPHYSICS, 2020, 85 (06) : B207 - B222
  • [39] Situation awareness, human error, and organizational learning in sociotechnical systems
    Marquardt, Nicki
    HUMAN FACTORS AND ERGONOMICS IN MANUFACTURING & SERVICE INDUSTRIES, 2019, 29 (04) : 327 - 339
  • [40] Airport Capacity Prediction With Multisource Features: A Temporal Deep Learning Approach
    Du, Wenbo
    Chen, Shenwen
    Li, Haitao
    Li, Zhishuai
    Cao, Xianbin
    Lv, Yisheng
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2023, 24 (01) : 615 - 630