首页> 外文会议>Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on >Adaptive sampling for environmental field estimation using robotic sensors
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Adaptive sampling for environmental field estimation using robotic sensors

机译:使用机器人传感器进行环境场估计的自适应采样

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Monitoring environmental phenomena by distributed sensor sampling confronts the challenge of unpredictable variability in the spatial distribution of phenomena often coupled with demands for a high spatial sampling rate. The introduction of actuation-enabled robotics sensors permits a system to optimize the sampling distribution through runtime adaptation. However, such systems must efficiently dispense sampling points or otherwise suffer from poor temporal response. In this paper, we propose and characterize an active modeling system. In our approach, as the robotic sensor acquires measurement samples of the environment, it builds a model of the phenomenon. Our algorithm is based on an incremental optimization process where the robot supports a continuous, iterative process of 1) collecting samples with maximal coverage in the design space; 2) building the environmental model; 3) predicting sampling point locations that contribute the greatest certainty regarding the phenomenon; and 4) sampling the environment based on a combined measure of information gain and navigation and sampling cost. This can provide significant reductions in the magnitude of field estimation error with a modest navigational trajectory time. We evaluate our algorithm through a simulation, using a combination of static and mobile sensors sampling light illumination field.
机译:通过分布式传感器采样监测环境现象,对应于现象空间分布的不可预测变异性的挑战,这些变化通常与对高空间采样率的需求相结合。启用驱动的机器人传感器的引入允许系统通过运行时适应来优化采样分布。然而,这种系统必须有效地分配取样点或以其他方式遭受差的时间响应。在本文中,我们提出并表征了一个主动建模系统。在我们的方法中,随着机器人传感器获取环境的测量样本,它建立了现象的模型。我们的算法基于增量优化过程,其中机器人支持1)的连续,迭代过程,在设计空间中收集具有最大覆盖的样本; 2)建立环境模型; 3)预测对现象的最大确定性的采样点位置; 4)根据信息增益和导航和采样成本的组合测量来抽样环境。这可以提供具有适度导航轨迹时间的现场估计误差的大小来提供显着的减少。我们通过模拟来评估我们的算法,使用静态和移动传感器采样光照明场的组合。

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