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Vehicle detection using improved region convolution neural network for accident prevention in smart roads

Abstract

This paper explores the vehicle detection problem and introduces an improved regional convolution neural network. The vehicle data (set of images) is first collected, from which the noise (set of outlier images) is removed using the SIFT extractor. The region convolution neural network is then used to detect the vehicles. We propose a new hyper-parameters optimization model based on evolutionary computation that can be used to tune parameters of the deep learning framework. The proposed solution was tested using the well-known boxy vehicle detection data, which contains more than 200,000 vehicle images and 1,990,000 annotated vehicles. The results are very promising and show superiority over many current state-of-the-art solutions in terms of runtime and accuracy performances.
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Category

Academic article

Language

English

Author(s)

  • Youcef Djenouri
  • Asma Belhadi
  • Gautam Srivastava
  • Djamel Djenouri
  • Jerry Chun-Wei Lin

Affiliation

  • SINTEF Digital / Mathematics and Cybernetics
  • University of the West of England, Bristol
  • Kristiania University of Applied Sciences
  • Western Norway University of Applied Sciences
  • China Medical University
  • Brandon University

Year

2022

Published in

Pattern Recognition Letters

ISSN

0167-8655

Volume

158

Page(s)

42 - 47

View this publication at Norwegian Research Information Repository