CCpos: WiFi Fingerprint Indoor Positioning System Based on CDAE-CNN

Chemical technology WiFi fingerprint positioning 0202 electrical engineering, electronic engineering, information engineering convolutional neural network TP1-1185 02 engineering and technology K-means convolutional denoising autoencoder Article
DOI: 10.3390/s21041114 Publication Date: 2021-02-07T19:04:13Z
ABSTRACT
WiFi is widely used for indoor positioning because of its advantages such as long transmission distance and ease of use indoors. To improve the accuracy and robustness of indoor WiFi fingerprint localization technology, this paper proposes a positioning system CCPos (CADE-CNN Positioning), which is based on a convolutional denoising autoencoder (CDAE) and a convolutional neural network (CNN). In the offline stage, this system applies the K-means algorithm to extract the validation set from the all-training set. In the online stage, the RSSI is first denoised and key features are extracted by the CDAE. Then the location estimation is output by the CNN. In this paper, the Alcala Tutorial 2017 dataset and UJIIndoorLoc are adopted to verify the performance of the CCpos system. The experimental results show that our system has excellent noise immunity and generalization performance. The mean positioning errors on the Alcala Tutorial 2017 dataset and the UJIIndoorLoc are 1.05 m and 12.4 m, respectively.
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