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Collective Scenario Understanding in a Multivehicle System by Consensus Decision Making

机译:通过共识决策制定的多维力系统中的集体情景理解

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In recent years, unmanned vehicles (UVs) have been largely employed in many applications. They, enhanced with computer vision and artificial intelligence, can autonomously recognize targets in an environment and detect events occurring in a real-world scenario. The employment of cooperative UVs can provide multiple interpretations supporting a multiperspective view of the scene. However, UV multiple interpretations often diverge, therefore, UVs need to find an agreed interpretation of the scenario. To this purpose, this paper proposes a novel consensus-based approach to lead multi-UV systems to find agreement on what they observe and build a group situation-based description of the scenario. UVs are modeled as experts in a group decision making problem that must decide on which situations best describe the scenario. First, the approach allows each UV to build high-level situations from the detected events through a fuzzy-based event aggregation. The event aggregation is modeled with a fuzzy ontology which allows each UV to express preferences on the situations. Then, a collective interpretation of situations is achieved by consensing each UV interpretation. Finally, consensus and proximity measures support the evaluation of the final group decision reliability. The assessed consensus reflects how much the collective scenario interpretation fits each UV perspective. The proximity measures support the detection of reliable and unreliable UVs to serve many tasks (i.e., mission replanning, damaged UV detection, etc.).
机译:近年来,无人驾驶车辆(UVS)在很大程度上都是在许多应用中使用的。它们增强了计算机视觉和人工智能,可以自主地识别环境中的目标,并检测在真实情景中发生的事件。合作紫外线的就业可以提供支持现场的多点视图的多种解释。然而,UV多种解释通常往来偏离,因此,UV需要找到对方案的商定解释。为此目的,本文提出了一种基于新的共识的基于共识的方法,以赋予多UV系统,以查找他们观察和构建基于团体情况的基于集团的情况的协议。 UVS被建模为群体决策的专家,必须决定哪种情况最能描述方案。首先,该方法允许每个UV通过基于模糊的事件聚合来构建来自检测到的事件的高电平情况。事件聚合以模糊本体模拟建模,允许每个UV在情况下表达偏好。然后,通过巩固每个紫外线解释来实现对情况的集体解释。最后,共识和邻近措施支持评估最终组决策可靠性。评估的协商一致反映了集体情景解释每个紫外线视角的拟合。邻近措施支持检测可靠和不可靠的UV,以提供许多任务(即,任务重新替换,损坏的UV检测等)。

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