WiFi fingerprinting is one of the mainstream technologies for indoor localization. However, it requires an initial calibration phase during which the fingerprint database is built manually. This process is labour intensive and needs to be repeated with any change in the environment. While a number of systems have been introduced to reduce the calibration effort through RF propagation models or crowdsourcing, these still have some limitations. Other approaches use the recently developed iBeacon technology as an alternative to WiFi for indoor localization. However, these beacon-based solutions are limited to a small subset of high-end phones. In this paper, we present HybridLoc: an accurate low-overhead indoor localization system. The basic idea HybridLoc builds on is to leverage the sensors of high-end phones to enable localization of lower-end phones. Specifically, the WiFi fingerprint is crowdsourced by opportunistically collecting WiFi-scans labeled with location data obtained from BLE-enabled high-end smart phones. These scans are used to automatically construct the WiFi-fingerprint, that is used later to localize any lower-end cell phone with the ubiquitous WiFi technology. HybridLoc also has provisions for handling the inherent error in the estimated BLE locations used in constructing the fingerprint as well as to handle practical deployment issues including the noisy wireless environment, heterogeneous devices, among others. Evaluation of HybridLoc using Android phones shows that it can provide accurate localization in the same range as manual fingerprinting techniques under the same conditions. Moreover, the localization accuracy on low-end phones supporting only WiFi is comparable to that achieved with high-end phones supporting BLE. This accuracy is achieved with no training overhead, is robust to the different user devices, and is consistent under environment changes.
翻译:WiFi 指纹是室内本地化的主流技术之一。 但是, 它需要初始校准阶段, 指纹数据库是手工构建的。 这个过程是劳动密集型的, 需要随着环境的变化而重复。 虽然已经引入了一些系统, 通过RF 传播模型或众包来降低校准工作, 但是这些系统仍然有一些局限性。 其他方法使用最近开发的iBeacon 技术, 作为室内本地化的WiFi 高端智能手机的替代品。 但是, 这些信标解决方案仅限于一小块高端手机。 我们在此文件中展示了 MindelLoc: 一个准确的低端室内本地本地化系统。 这个基本的想法是利用高端手机的传感器来降低校准校准校准校正。 使用WiFif- scormock的WiFif-cncccccrc 工具, 在本地化手机中可以使用相同的定位, 在本地化的服务器操作中, 也使用相同的校正的机路路路路规则, 。 在内部智能操作中, 在内部智能处理中, 也使用相同的机路路路路路路。