Building Entity Models through Observation and Learning

被引:0
|
作者
Garcia, Richard [1 ]
Kania, Robert [2 ]
Fields, MaryAnne [3 ]
Barnes, Laura [4 ]
机构
[1] Motile Robot Inc, Joppa, MD USA
[2] US Army, Tank Automat Res Dev & Engn Ctr, Arlington, TX USA
[3] US Army, Res Lab, Aberdeen Proving Ground, MD USA
[4] Univ S Florida, Tampa, FL USA
来源
关键词
mobile agent; territory guarding; invading strategies; multi-agent systems; adaptive systems; PURSUIT-EVASION;
D O I
10.1117/12.883892
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
To support the missions and tasks of mixed robotic/human teams, future robotic systems will need to adapt to the dynamic behavior of both teammates and opponents. One of the basic elements of this adaptation is the ability to exploit both long and short-term temporal data. This adaptation allows robotic systems to predict/anticipate, as well as influence, future behavior for both opponents and teammates and will afford the system the ability to adjust its own behavior in order to optimize its ability to achieve the mission goals. This work is a preliminary step in the effort to develop online entity behavior models through a combination of learning techniques and observations. As knowledge is extracted from the system through sensor and temporal feedback, agents within the multi-agent system attempt to develop and exploit a basic movement model of an opponent. For the purpose of this work, extraction and exploitation is performed through the use of a discretized two-dimensional game. The game consists of a predetermined number of sentries attempting to keep an unknown intruder agent from penetrating their territory. The sentries utilize temporal data coupled with past opponent observations to hypothesize the probable locations of the opponent and thus optimize their guarding locations.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Named Entity Recognition Through Learning from Experts
    Andrews, Martin
    INTELLIGENT AND EVOLUTIONARY SYSTEMS, IES 2015, 2016, 5 : 281 - 292
  • [22] A strategy for building topological maps through scene observation
    Freitas, Roger
    Sarcinelli-Filho, Mario
    Bastos-Filho, Teodiano
    Santos-Victor, Jose
    INFORMATICS IN CONTROL, AUTOMATION AND ROBOTICS II, 2007, : 109 - +
  • [23] Building Capacity Through Experiential Learning
    Cohen, Emma
    CANCER NURSING, 2016, 39 : S29 - S30
  • [24] Building learning organizations through leadership
    Gallego, Domingo J.
    Gil, Alfonso J.
    REVISTA UNIVERSIDAD EMPRESA, 2012, 14 (22): : 43 - 77
  • [25] Cohort Building Through Experiential Learning
    Seed, Allen Hugh
    JOURNAL OF EXPERIENTIAL EDUCATION, 2008, 31 (02) : 209 - 224
  • [26] LEARNING OF CONSERVATION BY OBSERVATION AS FUNCTION OF MODELS SUMMARY
    ROBERT, M
    CHARBONNEAU, C
    ANNEE PSYCHOLOGIQUE, 1980, 80 (02): : 411 - 431
  • [27] Learning extensible multi-entity directed graphical models
    Laskey, KB
    ARTIFICIAL INTELLIGENCE AND STATISTICS 99, PROCEEDINGS, 1999, : 243 - 248
  • [28] Assessing Bias on Entity Retrieval Models through Conjunctive Fallacies
    Marx, Edgard
    2023 IEEE 17TH INTERNATIONAL CONFERENCE ON SEMANTIC COMPUTING, ICSC, 2023, : 260 - 261
  • [29] Supervised Learning of Entity Disambiguation Models by Negative Sample Selection
    Daher, Hani
    Besancon, Romaric
    Ferret, Olivier
    Le Borgne, Herve
    Daquo, Anne-Laure
    Tamaazousti, Youssef
    COMPUTATIONAL LINGUISTICS AND INTELLIGENT TEXT PROCESSING (CICLING 2017), PT I, 2018, 10761 : 329 - 341
  • [30] Neural entity linking: A survey of models based on deep learning
    Sevgili, Oezge
    Shelmanov, Artem
    Arkhipov, Mikhail
    Panchenko, Alexander
    Biemann, Chris
    SEMANTIC WEB, 2022, 13 (03) : 527 - 570