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Effective deep learning aided vehicle classification approach using Seismic Data.

Sherief Hashima1,2, Mohamed H Saad3, Ahmad B Ahmad4

  • 1Computational Learning Theory Team, RIKEN-Advanced Intelligence Project, Fukuoka, 819-0395, Japan. sherief.hashima@riken.jp.

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|July 2, 2025
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Summary
This summary is machine-generated.

This study introduces a novel vehicle classification (VC) method using seismic vibrations, overcoming limitations of traditional visual sensors. This seismic approach achieves 99.8% accuracy, enhancing intelligent transportation systems (ITSs) even with limited data.

Keywords:
Contrastive learningContrastive lossDeep learningIntelligent transportation systemsSeismic signalVehicle classification

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Area of Science:

  • Transportation Engineering
  • Machine Learning
  • Signal Processing

Background:

  • Intelligent transportation systems (ITSs) rely on vehicle classification (VC) for traffic management.
  • Traditional VC methods using visual or sensor data are limited by environmental factors and privacy concerns.
  • There is a need for robust VC techniques resilient to adverse conditions.

Purpose of the Study:

  • To develop a novel vehicle classification technique using seismic data.
  • To address the limitations of traditional VC methods in ITSs.
  • To leverage self-supervised learning for seismic signal classification.

Main Methods:

  • A self-supervised contrastive learning approach was employed for seismic signal classification.
  • Specialized data augmentation techniques were used to create positive and negative sample pairs.
  • An encoder network and projection head were utilized for feature extraction and representation refinement.
  • Contrastive loss function was applied to align similar seismic features and separate dissimilar ones.

Main Results:

  • The proposed method achieved state-of-the-art performance in seismic signal classification.
  • An accuracy of 99.8% was attained, demonstrating high precision in vehicle classification.
  • The approach proved effective even with limited training data, highlighting its utility in data-scarce scenarios.
  • The method showed reduced susceptibility to environmental conditions compared to traditional techniques.

Conclusions:

  • Seismic data offers a robust alternative for vehicle classification in ITSs.
  • Self-supervised contrastive learning is effective for analyzing seismic signals for VC.
  • The developed technique provides a promising solution for accurate and reliable vehicle classification, especially in challenging environments.