Deep Learning-Based Vehicle Classification for Low Quality Images.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

This study proposes a simple convolutional neural network (CNN)-based model for vehicle classification in low resolution surveillance images collected by a standard security camera installed distant from a traffic scene. In order to evaluate its effectiveness, the proposed model is tested on a new dataset containing tiny (100 × 100 pixels) and low resolution (96 dpi) vehicle images. The proposed model is then compared with well-known VGG16-based CNN models in terms of accuracy and complexity. Results indicate that although the well-known models provide higher accuracy, the proposed method offers an acceptable accuracy (92.9%) as well as a simple and lightweight solution for vehicle classification in low quality images. Thus, it is believed that this study might provide useful perception and understanding for further research on the use of standard low-cost cameras to enhance the ability of the intelligent systems such as intelligent transportation system applications.

Authors

  • Sumeyra Tas
    Graduate School of Natural and Applied Sciences, Atilim University, Incek Golbasi, Ankara 06830, Turkey.
  • Ozgen Sari
    Graduate School of Natural and Applied Sciences, Atilim University, Incek Golbasi, Ankara 06830, Turkey.
  • Yaser Dalveren
    Department of Avionics, Atilim University, Kizilcasar Mahallesi, Incek Golbasi, Ankara 06830, Turkey.
  • Senol Pazar
    Department of Computer Programming, Biruni University, Istanbul 34010, Turkey.
  • Ali Kara
    Department of Electrical and Electronics Engineering, Gazi University, Eti Mahallesi, Yukselis Sokak, Maltepe, Ankara 06570, Turkey.
  • Mohammad Derawi
    Department of Electronic Systems, Norwegian University of Science and Technology, 2815 Gjøvik, Norway.