depuis le 05 février 2011 :
Visualisation(s): 351 (0 ULiège)
Téléchargement(s): 217 (0 ULiège)
print        
Somayeh Khajehasani

Investigating different methods of vehicle detection from aerial images

(Volume 86 - Année 2017 — Special issue)
Article
Open Access

Document(s) associé(s)

Version PDF originale

Abstract

Superpixel segmentation method designed for aerial images for controlling segmentation with low failure rate is suggested for detecting vehicles from aerial maps with high resolution and accuracy. For greater efficiency of practice and recognition, significant areas are extracted based on segmented superpixel centers. After segmentation, iteration strategy of sample selection based on scattered provision is used to provide a small and complete training subset of the original set. Selected training subset is a method that has the ability to distinguish and differentiate to detect vehicles. Training and detection for the features network of histogram of oriented gradient (HOG) is used to extract features.

Keywords : aerial images, high resolution, near-real-time, segmentation, superpixel, vehicle detection

Pour citer cet article

Somayeh Khajehasani, «Investigating different methods of vehicle detection from aerial images», Bulletin de la Société Royale des Sciences de Liège [En ligne], Volume 86 - Année 2017, Special issue, 518 - 527 URL : https://popups.uliege.be/0037-9565/index.php?id=6856.

A propos de : Somayeh Khajehasani

Department of Computer Engineering, University of Technology, Sirjan, Iran, khajeh@sirjantech.ac.ir