MVDoppler: Unleashing the Power of Multi-View Doppler for MicroMotion-Based Gait Classification

Soheil Hor, Shubo Yang, Jaeho Choi, Amin Arbabian
Stanford University
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We have the first multi-view Doppler dataset for micro-motion-based gait classification.

Abstract

Modern perception systems rely heavily on high-resolution cameras, LiDARs, and advanced deep neural networks, enabling exceptional performance across various applications. However, these optical systems predominantly depend on geometric features and shapes of objects, which can be challenging to capture in long-range perception applications. To overcome this limitation, alternative approaches such as Doppler-based perception using high-resolution radars have been proposed. Doppler-based systems are capable of measuring micro-motions of targets remotely and with very high precision. When compared to geometric features, the resolution of micro-motion features exhibits significantly greater resilience to the influence of distance. However, the true potential of Doppler-based perception has yet to be fully realized due to several factors. These include the unintuitive nature of Doppler signals, the limited availability of public Doppler datasets, and the current datasets' inability to capture the specific co-factors that are unique to Doppler-based perception, such as the effect of the radar's observation angle and the target's motion trajectory. This paper introduces a new large multi-view Doppler dataset together with baseline perception models for micro-motion-based gait analysis and classification. The dataset captures the impact of the subject's walking trajectory and radar's observation angle on the classification performance. Additionally, baseline multi-view data fusion techniques are provided to mitigate these effects. This work demonstrates that sub-second micro-motion snapshots can be sufficient for reliable detection of hand movement patterns and even changes in a pedestrian's walking behavior when distracted by their phone. Overall, this research not only showcases the potential of Doppler-based perception, but also offers valuable solutions to tackle its fundamental challenges.

BibTeX


  @inproceedings{NEURIPS2023_b5727c1b,
    author = {Hor, Soheil and Yang, Shubo and Choi, Jaeho and Arbabian, Amin},
    booktitle = {Advances in Neural Information Processing Systems},
    editor = {A. Oh and T. Neumann and A. Globerson and K. Saenko and M. Hardt and S. Levine},
    pages = {58064--58074},
    publisher = {Curran Associates, Inc.},
    title = {MVDoppler: Unleashing the Power of Multi-View Doppler for MicroMotion-based Gait Classification},
    url = {https://proceedings.neurips.cc/paper_files/paper/2023/file/b5727c1bab903e0ff21cec84a9a7f5a6-Paper-Datasets_and_Benchmarks.pdf},
    volume = {36},
    year = {2023}
  }