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Self-localization of three-dimensional sensor networks

机译:三维传感器网络的自定位

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Summary form only given. We consider the problem of locating and orienting a heterogeneous network of sensors that deployed in a three-dimensional scene at unknown locations and orientations. The self-localization problem is solved by placing a number of source signals, which in general also have unknown locations, in the scene. A subset of sensors in the network measures the time-of-arrival and local direction-of-arrival of the signal emitted from each source. From these noisy measurements and a measurement uncertainty model we compute maximum likelihood (ML) sensor locations and orientation estimates. We also compute the Cramer-Rao bound for localization accuracy. We present numerical examples using a mix of acoustic and imaging sensors. The acoustic sensors measure TDOAs of acoustic calibration sources, along with DOA with relatively high uncertainty. The imaging sensors measure DOA only, but with high accuracy.
机译:仅提供摘要表格。我们考虑如何定位和定向在未知位置和方向的三维场景中部署的异构传感器网络。通过在场景中放置许多通常具有未知位置的源信号来解决自定位问题。网络中的传感器子集测量从每个源发出的信号的到达时间和本地到达方向。根据这些嘈杂的测量结果和测量不确定度模型,我们可以计算出最大似然(ML)传感器位置和方向估计值。我们还计算了Cramer-Rao边界以提高定位精度。我们提供了混合了声学和影像传感器的数值示例。声学传感器测量声学校准源的TDOA以及不确定性相对较高的DOA。成像传感器仅测量DOA,但精度很高。

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