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Research on Pedestrian and Cyclist Classification Method Based on Micro-Doppler Effect. | LitMetric

Research on Pedestrian and Cyclist Classification Method Based on Micro-Doppler Effect.

Sensors (Basel)

College of Communication Engineering, Jilin University, Changchun 130000, China.

Published: October 2024

AI Article Synopsis

  • The text discusses the need for improved detection of vulnerable road users (VRUs) like pedestrians and cyclists in autonomous driving to enhance safety.
  • It highlights the inadequacy of traditional classification methods due to the similarity between these two groups, prompting the development of a new algorithm based on the micro-Doppler effect.
  • The proposed method uses advanced data processing techniques and a support vector machine for better classification accuracy, showing superior performance through various testing methods.

Article Abstract

In the field of autonomous driving, it is important to protect vulnerable road users (VRUs) and ensure the safety of autonomous driving effectively by improving the detection accuracy of VRUs in the driver's field of vision. However, due to the strong temporal similarity between pedestrians and cyclists, the insensitivity of the traditional least squares method to their differences results in its suboptimal classification performance. In response to this issue, this paper proposes an algorithm for classifying pedestrian and cyclist targets based on the micro-Doppler effect. Firstly, distinct from conventional time-frequency fusion methods, a preprocessing module was developed to solely perform frequency-domain fitting on radar echo data of pedestrians and cyclists in forward motion, with the purpose of generating fitting coefficients for the classification task. Herein, wavelet threshold processing, short-time Fourier transform, and periodogram methods are employed to process radar echo data. Then, for the heightened sensitivity to inter-class differences, a fractional polynomial is introduced into the extraction of micro-Doppler characteristics of VRU targets to enhance extraction precision. Subsequently, the support vector machine technique is embedded for precise feature classification. Finally, subjective comparisons, objective explanations, and ablation experiments demonstrate the superior performance of our algorithm in the field of VRU target classification.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11479031PMC
http://dx.doi.org/10.3390/s24196398DOI Listing

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