P. Sankhe, S. Azim, Sachin Goyal, Tanya Choudhary, K. Appaiah, S. Srikant
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引用次数: 1
摘要
像GPS这样的全球导航卫星系统(GNSS)存在精度下降的问题,并且在室内环境中几乎不可用。基于WiFi信号的室内定位系统(IPS)越来越受欢迎。然而,由于室内环境下无线通信信道的时空变化,现有IPS的实现精度在几十厘米左右。我们提出了一种基于自适应wifi的室内距离估计系统的详细设计和实现。该系统的新颖之处在于,它通过克服信道变化的可能原因,以高精度估计目标的距离,并能自适应不断变化的环境和周围条件。提出的设计已经在一个由ESP8266 (NodeMCU)设备组成的WiFi网络上开发和物理实现。实验在真实的室内环境中进行,同时改变周围环境,以建立系统的适应性。我们比较了基于lstm、cnn和全连接网络(fcn)的不同架构。我们表明,基于LSTM的模型在上述所有架构中表现更好,在(8.46 m × 6.98 m)尺度上达到5.85 cm的精度,置信区间为93%。据我们所知,所提出的方法明显优于文献中报道的其他方法。
Indoor Distance Estimation using LSTMs over WLAN Network
The Global Navigation Satellite Systems (GNSS) like GPS suffer from accuracy degradation and are almost unavailable in indoor environments. Indoor positioning systems (IPS) based on WiFi signals have been gaining popularity. However, owing to the strong spatial and temporal variations of wireless communication channels in the indoor environment, the achieved accuracy of existing IPS is around several tens of centimeters. We present the detailed design and implementation of a self-adaptive WiFi-based indoor distance estimation system using LSTMs. The system is novel in its method of estimating with high accuracy the distance of an object by overcoming possible causes of channel variations and is self-adaptive to the changing environmental and surrounding conditions. The proposed design has been developed and physically realized over a WiFi network consisting of ESP8266 (NodeMCU) devices. The experiments were conducted in a real indoor environment while changing the surroundings in order to establish the adaptability of the system. We compare different architectures for this task based on LSTMs, CNNs, and fully connected networks (FCNs). We show that the LSTM based model performs better among all the above-mentioned architectures by achieving an accuracy of 5.85 cm with a confidence interval of 93% on the scale of (8.46 m × 6.98 m). To the best of our knowledge, the proposed method outperforms other methods reported in the literature by a significant margin.