A Deep Learning Approach for Generating Soft Range Information from RF Data
Date
2022-01-24Metadata
Show full item recordAbstract
Radio frequency (RF)-based techniques are widely
adopted for indoor localization despite the challenges in extracting
sufficient information from measurements. Soft range
information (SRI) offers a promising alternative for highly
accurate localization that gives all probable range values rather
than a single estimate of distance. We propose a deep learning
approach to generate accurate SRI from RF measurements. In
particular, the proposed approach is implemented by a network
with two neural modules and conducts the generation directly
from raw data. Extensive experiments on a case study with
two public datasets are conducted to quantify the efficiency
in different indoor localization tasks. The results show that
the proposed approach can generate highly accurate SRI, and
significantly outperforms conventional techniques in both nonline-of-sight (NLOS) detection and ranging error mitigation.