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Ambient Sound-Based Collaborative Localization of Indeterministic Devices

机译:基于声音的环境不确定设备的协同本地化

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摘要

Localization is essential in wireless sensor networks. To our knowledge, no prior work has utilized low-cost devices for collaborative localization based on only ambient sound, without the support of local infrastructure. The reason may be the fact that most low-cost devices are indeterministic and suffer from uncertain input latencies. This uncertainty makes accurate localization challenging. Therefore, we present a collaborative localization algorithm (Cooperative Localization on Android with ambient Sound Sources (CLASS)) that simultaneously localizes the position of indeterministic devices and ambient sound sources without local infrastructure. The CLASS algorithm deals with the uncertainty by splitting the devices into subsets so that outliers can be removed from the time difference of arrival values and localization results. Since Android is indeterministic, we select Android devices to evaluate our approach. The algorithm is evaluated with an outdoor experiment and achieves a mean Root Mean Square Error (RMSE) of 2.18 m with a standard deviation of 0.22 m. Estimated directions towards the sound sources have a mean RMSE of 17.5° and a standard deviation of 2.3°. These results show that it is feasible to simultaneously achieve a relative positioning of both devices and sound sources with sufficient accuracy, even when using non-deterministic devices and platforms, such as Android.
机译:本地化对于无线传感器网络至关重要。据我们所知,在没有本地基础设施支持的情况下,没有以前的工作将低成本设备用于仅基于环境声音的协作式本地化。原因可能是大多数低成本设备不确定且遭受不确定的输入延迟的事实。这种不确定性使准确的本地化具有挑战性。因此,我们提出了一种协作式本地化算法(Android上的带有环境声源(CLASS)的协作式本地化),该算法可同时定位不确定性设备和环境声源的位置,而无需本地基础架构。 CLASS算法通过将设备分成子集来处理不确定性,以便可以从到达值和定位结果的时间差中去除异常值。由于Android是不确定的,因此我们选择Android设备来评估我们的方法。该算法通过户外实验进行了评估,其平均均方根误差(RMSE)为2.18 m,标准偏差为0.22 m。朝向声源的估计方向的平均RMSE为17.5°,标准偏差为2.3°。这些结果表明,即使使用不确定的设备和平台(例如Android),也可以同时以足够的精度同时实现设备和声源的相对定位。

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