Tracking the Occluded Indoor Target with Scattered Millimeter Wave Signal

  • Yinda Xu (Aalto University) (Creator)
  • Bo Tan (Creator)

Dataset

Description

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.
Date made available8 May 2024
PublisherIEEE DataPort

Field of science, Statistics Finland

  • 213 Electronic, automation and communications engineering, electronics

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