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An Advanced Deep Learning Approach for Multi-Object Counting in Urban Vehicular Environments

Author

Listed:
  • Ahmed Dirir

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

  • Henry Ignatious

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

  • Hesham Elsayed

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates
    Emirates Center for Mobility Research, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

  • Manzoor Khan

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates
    Emirates Center for Mobility Research, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

  • Mohammed Adib

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

  • Anas Mahmoud

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

  • Moatasem Al-Gunaid

    (College of Information Technology, UAE University, Al Ain, Abu Dhabi 15551, United Arab Emirates)

Abstract

Object counting is an active research area that gained more attention in the past few years. In smart cities, vehicle counting plays a crucial role in urban planning and management of the Intelligent Transportation Systems (ITS). Several approaches have been proposed in the literature to address this problem. However, the resulting detection accuracy is still not adequate. This paper proposes an efficient approach that uses deep learning concepts and correlation filters for multi-object counting and tracking. The performance of the proposed system is evaluated using a dataset consisting of 16 videos with different features to examine the impact of object density, image quality, angle of view, and speed of motion towards system accuracy. Performance evaluation exhibits promising results in normal traffic scenarios and adverse weather conditions. Moreover, the proposed approach outperforms the performance of two recent approaches from the literature.

Suggested Citation

  • Ahmed Dirir & Henry Ignatious & Hesham Elsayed & Manzoor Khan & Mohammed Adib & Anas Mahmoud & Moatasem Al-Gunaid, 2021. "An Advanced Deep Learning Approach for Multi-Object Counting in Urban Vehicular Environments," Future Internet, MDPI, vol. 13(12), pages 1-16, November.
  • Handle: RePEc:gam:jftint:v:13:y:2021:i:12:p:306-:d:691507
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