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Human Activity Recognition from Point Clouds Generated through a Millimeter-wave Radar

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RadHAR

Human Activity Recognition from Point Clouds Generated through a Millimeter-wave Radar

An extension work of https://github.com/nesl/RadHAR, the previous published work can be found in https://doi.org/10.1145/3349624.3356768.

This extended work is mainly contributed by Qiong Hu, supported by Akash Deep Singh and Ziqi Wang. The report of this work can be found in the cover letter.

  • Objective:
    • Filter out noise signals from Radar point clouds
    • Retrieve and generate human figures
    • Recognize and classify human motions
  • Methods:
    • Extract the characteristics of data distribution individually on three dimensions
    • Use statistic functions to fit the target signal area in the data distribution histogram
    • Filter out noise signals
    • Use shift-and-add to obtain target figure information
    • Algorithm can be found in filter.py
  • Results/Applications:
    • The filtering algorithm can effectively filter out environmental noises, estimate the human figure center and generate human cuboid representation every two seconds
    • Using the center points from all the datas can generate human motion trajectory
    • Using the cuboid representation can estimate human figure size and skeleton representation
    • The filtering algorithm is generated from one single dataset from one walking experiment, and is applicable for other walking experiments and more motions without having pre-knowledge or changing parameters
    • Resulting images can be found in img/
    • Resulting datas of trajectory estimation and figure size estimation can be found in results.yaml
  • Future work:
    • About Methods:
      • Fitting function for data distribution in Z dimension may converge, which may be replaced by a learning algorithm
      • The shift-and-add function still need debug about which point in every frame to align to the center from 60 frames
      • The figure skeleton is based on fixed human body proportion for now, which may be replaced by information extracted from the filtered data points
    • About Applications:
      • The figure size estimation is not accurate enough yet
      • When the algorithm is applied to unfamiliar dataset, there would still be several noises that are not completely filtered out
      • The final objective would be to extract accurate human posture and recognize/classify human motions

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