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タイトルUsing Multimodal Input for Autonomous Decision Making for Unmanned Systems
本文(外部サイト)http://hdl.handle.net/2060/20160006102
著者(英)Qualls, Garry; Cross, Charles; Rothhaar, Paul; Tran, Loc; Motter, Mark; Allen, B. Danette; Neilan, James H.; Trujillo, Anna
発行日2016-06-24
言語eng
内容記述Autonomous decision making in the presence of uncertainly is a deeply studied problem space particularly in the area of autonomous systems operations for land, air, sea, and space vehicles. Various techniques ranging from single algorithm solutions to complex ensemble classifier systems have been utilized in a research context in solving mission critical flight decisions. Realized systems on actual autonomous hardware, however, is a difficult systems integration problem, constituting a majority of applied robotics development timelines. The ability to reliably and repeatedly classify objects during a vehicles mission execution is vital for the vehicle to mitigate both static and dynamic environmental concerns such that the mission may be completed successfully and have the vehicle operate and return safely. In this paper, the Autonomy Incubator proposes and discusses an ensemble learning and recognition system planned for our autonomous framework, AEON, in selected domains, which fuse decision criteria, using prior experience on both the individual classifier layer and the ensemble layer to mitigate environmental uncertainty during operation.
NASA分類Cybernetics, Artificial Intelligence and Robotics
レポートNONF1676L-20291
権利No Copyright


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