Selective and Hierarchical Allocation of Sensing Resources for Anomalous Target Identification in Exploratory Missions

B. A. Blakeslee, Giuseppe Loianno
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Abstract

We present an approach for selective, hierarchical allocation of sensing resources that aims to maximize information gain in exploratory missions such as search and rescue (SAR) or surveillance in an efficient manner. Specifically, we propose a methodology for perception-enabled SAR or crowd surveillance driven by anomaly detection based on low-level statistical assessment of a region. The characterizations of previously-observed regions are used to populate a window of observations that serves as “short-term memory,” providing a contextually-appropriate characterization of proximate regions in the scene. Currently-observed regions are compared with this short-term memory window, and if sufficiently dissimilar, can be considered as candidates for the presence of a SAR target or unexpected event. We adaptively allocate additional sensing resources for subsequent exploration of anomalous regions through a novel utility function that balances varied mission objectives and constraints including exploratory sensing actions, maintaining situational awareness, or ensuring some degree of confidence in self-localization. Simulation results validate the proposed approach and demonstrate its benefits with regards to efficiency in exploration while maximizing potential information gain and balancing other mission requirements and objectives.
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探测任务中异常目标识别的感知资源选择与分层分配
我们提出了一种选择性、分层分配传感资源的方法,旨在以有效的方式最大化探索任务(如搜索和救援(SAR)或监视)中的信息增益。具体而言,我们提出了一种基于区域低级统计评估的异常检测驱动的感知SAR或人群监视方法。先前观察到的区域的特征被用来填充作为“短期记忆”的观察窗口,提供场景中邻近区域的上下文适当特征。将当前观测到的区域与这个短期记忆窗口进行比较,如果足够不同,可以将其视为存在SAR目标或意外事件的候选区域。我们通过一种新的实用函数,自适应地分配额外的传感资源,用于后续对异常区域的探索,该函数平衡了各种任务目标和约束,包括探索性传感行动,保持态势感知,或确保一定程度的自我定位信心。仿真结果验证了所提出的方法,并证明了其在勘探效率方面的优势,同时最大化潜在信息获取和平衡其他任务需求和目标。
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