Semi-Supervised Learning for Channel Charting-Aided IoT Localization in
Millimeter Wave Networks
- URL: http://arxiv.org/abs/2108.08241v1
- Date: Tue, 3 Aug 2021 14:41:38 GMT
- Title: Semi-Supervised Learning for Channel Charting-Aided IoT Localization in
Millimeter Wave Networks
- Authors: Qianqian Zhang and Walid Saad
- Abstract summary: A novel framework is proposed for channel charting (CC)-aided localization in millimeter wave networks.
In particular, a convolutional autoencoder model is proposed to estimate the three-dimensional location of wireless user equipment.
The framework is extended to a semi-supervised framework, where the autoencoder is divided into two components.
- Score: 97.66522637417636
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, a novel framework is proposed for channel charting (CC)-aided
localization in millimeter wave networks. In particular, a convolutional
autoencoder model is proposed to estimate the three-dimensional location of
wireless user equipment (UE), based on multipath channel state information
(CSI), received by different base stations. In order to learn the
radio-geometry map and capture the relative position of each UE, an
autoencoder-based channel chart is constructed in an unsupervised manner, such
that neighboring UEs in the physical space will remain close in the channel
chart. Next, the channel charting model is extended to a semi-supervised
framework, where the autoencoder is divided into two components: an encoder and
a decoder, and each component is optimized individually, using the labeled CSI
dataset with associated location information, to further improve positioning
accuracy. Simulation results show that the proposed CC-aided semi-supervised
localization yields a higher accuracy, compared with existing supervised
positioning and conventional unsupervised CC approaches.
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