• Title of article

    Two-level Ensemble Deep Learning for Traffic Management using Multiple Vehicle Detection in UAV Images

  • Author/Authors

    Ghasemi Darehnaei, Zeinab Department of Electrical Engineering - College of Engineering - Islamic Azad University Saveh Branch, Saveh, Iran , Rastegar Fatemi, Mohammad Jalal Department of Electrical Engineering - College of Engineering - Islamic Azad University Saveh Branch, Saveh, Iran , Mirhassani, Mostafa Department of Electrical Engineering - Islamic Azad University Shahrood Branch, Shahrood, Iran , Fouladian, Majid Department of Electrical Engineering - College of Engineering - Islamic Azad University Saveh Branch, Saveh, Iran

  • Pages
    7
  • From page
    127
  • To page
    133
  • Abstract
    Environmental monitoring via vehicle detecting using unmanned aerial vehicle (UAV) images is a challenging task, due to small-size, low-resolution, and large-scale variation of the objects. In this paper, a two-level ensemble deep learning (named 2EDL) based on Faster R-CNN (regional-based convolutional neural network) introduced for multiple vehicle detection in UAV images. We use three CNN models (VGG16, ResNet50, and GoogLeNet) that have already pre-trained on huge auxiliary data as feature extraction tools, combined with five learning models (KNN, SVM, MLP, C4.5 Decision Tree, and Naïve Bayes), resulting 15 different base learners in two levels. The final class is obtained via a majority vote rule ensemble of these 15 models into five vehicle classes (car, van, truck, bus, and trailer) or “no-vehicle”. Simulation results on the AU-AIR dataset of UAV images show the superiority of the proposed 2EDL technique against existing methods, in terms of the total accuracy, and FPR-FNR trade-off.
  • Farsi abstract
    فاقد چكيده فارسي
  • Keywords
    Deep transfer learning , ensemble learning , multiple object detection , unmanned aerial vehicles
  • Journal title
    International Journal of Smart Electrical Engineering
  • Serial Year
    2021
  • Record number

    2700715