Tracking the Occluded Indoor Target with Scattered Millimeter Wave Signal

Citation Author(s):
Yinda
Xu
Aalto University
Bo
Tan
Tampere University
Submitted by:
Yinda Xu
Last updated:
Mon, 08/05/2024 - 16:24
DOI:
10.21227/bca8-3r93
Data Format:
License:
0
0 ratings - Please login to submit your rating.

Abstract 

In our work, we propose an innovative system to accurately infer and track occluded target locations using mmWave beat frequency signals. Our approach combines a classic direction-finding method with advanced deep learning techniques, specifically a convolutional neural network (CNN), to enhance detection capabilities. The dataset includes raw beat frequency signal data from the TI IWR6843ISK rev B with TI mmWAVEICBOOST and the TI DCA1000EVM capture board. Corresponding ground truth data (target position) from the Realsense L515 RGB-D camera is also provided. Additionally, we include middle-processed data, post-processed data for training the CNN, and comprehensive scripts for processing, CNN training, CNN testing, and data visualization. This complete package ensures a robust system for improved accuracy in detecting and tracking targets, even in occluded scenarios.

Instructions: 

Please refer to the uploaded documentation.
Note, firstly, download all the compressed files, and then put all folders and files into one directory.

Dataset Files

LOGIN TO ACCESS DATASET FILES

Documentation

AttachmentSize
File DataportDocumentation.pdf257.88 KB