This repo contains code and dataset of the paper "ReWiS: Reliable Wi-Fi Sensing Through Few-Shot Multi-Antenna Multi-Receiver CSI Learning"
Collected CSI dataset can be found at https://drive.google.com/drive/folders/1H-0GFOIHmHpHfdV-T5qv_diov_dCQxMS?usp=sharing
The folder Formatted_data_frames
contains the cleaned, formatted and pre-processed data frames collected from 3 distinct environements, namely A1, A2 and A3. Data folders starts with mXcY
where X
indicates the number of monitors and Y is the number of antenna used for collecting the data. trained_A1
is used for training the Few-shot model and test_A2
and test_A3
are used for testing. Each folder contains data for 4 activities, i.e., standing, walking, jumping and empty room.
The folder Raw_pcap
contains raw .pcap
collected CSI data.
For datasets with one monitor use one_mon.py
and one_mon_trained_embedding.py
.
one_mon_trained_embedding.py
utilizes a CNN for embedded training, while one_mon.py
utilizes resnet 12 for embedding training.\
For datasets with three monitors use three_mons.py
and three_mon_trained_embedding.py
.
three_mon_trained_embedding.py
utilizes a CNN for embedded training, while three_mons.py
utilizes resnet 12 for embedding training.\
- Download the dataset in folder
Formatted_data_frames
- Place datasets in folder
few_shot_datasets
- Pick the propoer datafolder for training:
m1c1_xxx
orm1c4_xxx
forone_mon_trained_embedding.py
andm3c1_xxx
orm3c4_xxx
forthree_mon_trained_embedding.py
. - Pick the desired testing environment (either A2 or A3).