Miloud CHIKR EL-MEZOUAR

Work place: Department of Electronics, Djillali Liabes University, Sidi Bel-Abbes, Algeria

E-mail: chikrelmezouar@univ-sba.dz

Website:

Research Interests: Pattern Recognition, Image Compression, Image Manipulation, Image Processing

Biography

Miloud CHIKR El-MEZOUAR received the Dipl.Ing. and Magister degrees in electrical engineering from Djillali Liabes University, Sidi Bel-Abbes, Algeria, and the Ph.D. degree in signal and image processing, under joint supervision, from Djillali Liabes University and from the Institut National des Sciences Appliquées (INSA), Rennes, France. He joined as a Lecturer in Djillali Liabes University in 2002 and is currently an Associate Professor with the Department of Electronic Engineering at the same University. His principle research interests are in the fields of digital signal and image processing, image analysis, medical and satellite image applications, remote sensing and pattern recognition.

Author Articles
A Novel Object Position Coding for Multi-Object Tracking using Sparse Representation

By Mohamed ELBAHRI Kidiyo KPALMA Nasreddine TALEB Miloud CHIKR EL-MEZOUAR

DOI: https://doi.org/10.5815/ijigsp.2015.08.01, Pub. Date: 8 Jul. 2015

Multi-object tracking is a challenging task, especially when the persistence of the identity of objects is required. In this paper, we propose an approach based on the detection and the recognition. To detect the moving objects, a background subtraction is employed. To solve the recognition problem, a classification system based on sparse representation is used. With an online dictionary learning, each detected object is classified according to the obtained sparse solution. Each column of the used dictionary contains a descriptor representing an object. Our main contribution is the representation of the moving object with a descriptor derived from a novel representation of its 2-D position and a histogram-based feature, improved by using the silhouette of this object. Experimental results show that the approach proposed for describing moving objects, combined with the classification system based on sparse representation provides a robust multi-object tracker in videos involving occlusions and illumination changes.

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