基于指纹图像的多栋建筑室内3D Wi-Fi卷积神经网络定位

Amala Sonny, Abhinav Kumar
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引用次数: 0

摘要

基于Wi-Fi的室内定位由于其广泛的覆盖范围和可用性在全球范围内受到了广泛的关注。在使用Wi-Fi信号的几种可能的方法中,基于指纹图像的方法由于其低硬件要求而受到欢迎。此外,该方法可单独使用或与其他定位系统一起用于室内定位。然而,这需要一个多楼、多楼层、高定位精度的室内定位系统。基于此,我们提出了一种基于卷积神经网络(CNN)的方法。在特征提取和分类方面,开发并实现了一种多输出多标签序列2D-CNN分类器。该系统能够通过结合多输出模型的分类输出来预测用户的位置。这种方法在公开可用的UJIIndoorLoc数据库上进行了验证。该系统在室内定位的平均准确率为97%。
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Fingerprint Image-Based Multi-Building 3D Indoor Wi-Fi Localization Using Convolutional Neural Networks
Wi-Fi based indoor localization has gained much attention around the globe due to its widespread reach and availability. Amongst several possible approaches using Wi-Fi signals, fingerprint image-based approach has become popular due to its low hardware requirements. Further, this approach can be used alone or along with other positioning systems for indoor localization. However, a multi-building, multi-floor indoor positioning system with high localization accuracy is required. Motivated by this, we propose a Convolutional Neural Networks (CNN)-based approach. For feature extraction and classification, a multi-output multi-label sequential 2D-CNN classifier is developed and implemented. The system is able to predict the location of the user by combining the classification output from the multi-output model. This approach is verified on the publicly available UJIIndoorLoc database. The system offers an average accuracy of 97% in indoor localization.
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