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WiDeep: WiFi-based Accurate and Robust Indoor Localization System using Deep Learning

机译:WIVEEP:基于WiFi的准确和强大的室内定位系统,使用深​​度学习

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Robust and accurate indoor localization has been the goal of several research efforts over the past decade. Due to the ubiquitous availability of WiFi indoors, many indoor localization systems have been proposed relying on WiFi fingerprinting. However, due to the inherent noise and instability of the wireless signals, the localization accuracy usually degrades and is not robust to dynamic changes in the environment.We present WiDeep, a deep learning-based indoor localization system that achieves a fine-grained and robust accuracy in the presence of noise. Specifically, WiDeep combines a stacked denoising autoencoders deep learning model and a probabilistic framework to handle the noise in the received WiFi signal and capture the complex relationship between the WiFi APs signals heard by the mobile phone and its location. WiDeep also introduces a number of modules to address practical challenges such as avoiding over-training and handling heterogeneous devices.We evaluate WiDeep in two testbeds of different sizes and densities of access points. The results show that it can achieve a mean localization accuracy of 2.64m and 1.21m for the larger and the smaller testbeds, respectively. This accuracy outperforms the state-of-the-art techniques in all test scenarios and is robust to heterogeneous devices.
机译:强大而准确的室内本地化一直是过去十年几次研究努力的目标。由于WiFi在室内无处不在的可用性,已经提出了许多室内定位系统,依赖于WiFi指纹识别。然而,由于无线信号的固有噪声和不稳定性,本地化精度通常会降低,并且对环境的动态变化并不稳健。我们呈现WIVeep,一种基于深度学习的室内定位系统,实现了细粒度和强大的在噪音存在下的准确性。具体地,结合WiDeep堆叠去噪自动编码深度学习模型和概率框架来处理所接收的无线信号中的噪声,并捕获由移动电话和其位置听到所述WiFi接入点的信号之间的复杂关系。 Wideep还介绍了许多模块,以解决实际挑战,例如避免过度训练和处理异构设备。我们评估两个不同尺寸和密度的接入点密度的Wideep。结果表明,对于较大且较小的试验台,它可以达到2.64米和1.21米的平均定位精度。这种精度在所有测试场景中突出了最先进的技术,并且对异构设备具有稳健性。

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