Pedestrian detection for intelligent transportation systems combining AdaBoost algorithm and support vector machine.

Auteur(s)
Guo, L. Ge, P.S. Zhang, M.H. Li, L.H. & Zhao, Y.B.
Jaar
Samenvatting

Pedestrians are the vulnerable participants in transportation system when crashes happen. It is important to detect pedestrian efficiently and accurately in many computer vision applications, such as intelligent transportation systems (ITSs) and safety driving assistant systems (SDASs). This paper proposes a two-stage pedestrian detection method based on machine vision. In the first stage, AdaBoost algorithm and cascading method are adopted to segment pedestrian candidates from image. To confirm whether each candidate is pedestrian or not, a second stage is needed to eliminate some false positives. In this stage, a pedestrian recognizing classifier is trained with support vector machine (SVM). The input features used for SVM training are extracted from both the sample gray images and edge images. Finally, the performance of the proposed pedestrian detection method is tested with real-world data. Results show that the performance is better than conventional single-stage classifier, such as AdaBoost based or SVM based classifier. (Author/publisher)

Publicatie

Bibliotheeknummer
20121647 ST [electronic version only]
Uitgave

Expert Systems with Applications, Vol. 39 (2012), No. 4 (March), p. 4274-4286, 38 ref.

Onze collectie

Deze publicatie behoort tot de overige publicaties die we naast de SWOV-publicaties in onze collectie hebben.