Abstract
In the process of identifying non-line-of-sight (NLOS), acoustics-based
indoor positioning needs to collect audio recordings of sound fields in
multiple rooms and upload them to the central server for training. Once
the transmission process and server-side suffer malicious attacks,
private data will also be leaked. To solve the training difficulty and
privacy issues at the same time, we propose a novel Personalized
Federated Learning (PFL) model combined with user frequency and room
data capacity, taking into account the significant differences in
positioning data with room layout. The proposed model can accurately
identify the differences between different room data when aggregating on
the server-side. By collecting data in the actual indoor environment and
comparing the existing algorithms, the accuracy of the proposed method
in the data verification of unfamiliar rooms is 90%.