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Indoor Intelligent Vehicle localization using WiFi received signal strength indicator

机译:使用WiFi接收信号强度指示器的室内智能车定位

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Success of Intelligent Vehicle navigation largely depends on the ability to localize precisely the vehicle in the environment. In general, all intelligent vehicle seemed to agree on a combination of non-cumulative error localization method like GPS with more precise localization method but suffered from cumulative errors like Laser-SLAM with an odometer. However, as GPS is only available for outdoor environment and since the indoor environment is also an important scenario for intelligent vehicles, a replacement of GPS for indoor localization is required. Successfully replacing GPS will not only provide a reliable indoor localization method for vehicles but also keep the architecture of vehicle localizing system consistent and achieve a smooth transition from outdoor to indoor and vice versa. Often, movement speed for indoor vehicles will be as low as 10-12km/h [1] but still, it surpasses the movement speed of human walking (3-5km/h) and presents a challenge for a tight and complex environment. This paper proposes an improved WiFi-fingerprinting method to replace GPS behavior for the indoor environment. The key contribution is to use a raw data smoothing technique with an ensemble classification neural network method to deal with noisy WiFi signal strength. Also, environment constraints are applied to improve localization result. Experiments show this method is capable of replacing GPS for the indoor environment.
机译:智能车辆导航的成功很大程度上取决于在环境中精确定位车辆的能力。总的来说,所有智能车辆似乎都同意将非累积误差定位方法(如GPS)与更精确的定位方法相结合,但会遇到累积误差(如带里程表的Laser-SLAM)。但是,由于GPS仅适用于室外环境,并且由于室内环境也是智能车辆的重要场景,因此需要替换GPS进行室内定位。成功取代GPS不仅可以为车辆提供可靠的室内定位方法,而且可以使车辆定位系统的体系结构保持一致,并实现从室外到室内的平稳过渡,反之亦然。通常,室内车辆的运动速度会低至10-12 km / h [1],但仍然超过了人类步行的运动速度(3-5 km / h),这对狭窄而复杂的环境提出了挑战。本文提出了一种改进的WiFi指纹方法来代替室内环境中的GPS行为。关键的贡献是使用原始数据平滑技术和集成分类神经网络方法来处理嘈杂的WiFi信号强度。而且,环境约束被应用于改善定位结果。实验表明,该方法能够代替室内环境中的GPS。

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