Improving ViBe-based Background Subtraction Techniques Using RGBD Information

Archive ouverte : Communication dans un congrès

Houhou, Ihssane | Zitouni, Athmane | Ruichek, Yassine | Bekhouche, Salah Eddine | Taleb-Ahmed, Abdelmalik

Edité par HAL CCSD ; IEEE

International audience. In this paper, we propose a framework for improving Background Subtraction techniques. This framework is based on two types of data, RGB and Depth. Our study stands for obtaining preliminary results of the background segmentation using Depth and RGB channels independently, then using an algorithm to fuse them to create the final results. The experiments on the SBM-RGBD dataset using four methods: ViBe, LOBSTER, SuBSENSE, and PAWCS proved that the proposed framework achieves an impressive performance compared to the original RGB-based techniques from the state-of-the-art.

Consulter en ligne

Suggestions

Du même auteur

RGBD deep multi-scale network for background subtraction

Archive ouverte: Article de revue

Houhou, Ihssane | 2022

International audience. This paper proposes a novel deep learning model called deep multi-scale network (DMSN) for background subtraction. This convolutional neural network is built to use RGB color channels and Dep...

Using saliency detection to improve multi-focus image fusion

Archive ouverte: Article de revue

Babahenini, Sarra | 2021-10-04

International audience. In this paper, we introduce a novel and efficient algorithm based on saliency detection methods, our main contribution is a new manner to calculate the weight map by normalising the saliency ...

A Novel Multi-Level Pyramid Co-Variance Operators for Estimation of Persona...

Archive ouverte: Article de revue

Telli, Hichem | 2021

International audience. Recently, automatic personality analysis is becoming an interesting topic for computer vision. Many attempts have been proposed to solve this problem using time-based sequence information. In...

Du même sujet

RGBD deep multi-scale network for background subtraction

Archive ouverte: Article de revue

Houhou, Ihssane | 2022

International audience. This paper proposes a novel deep learning model called deep multi-scale network (DMSN) for background subtraction. This convolutional neural network is built to use RGB color channels and Dep...

A CMOS Compatible Thermoelectric Device made of Crystalline Silicon Membran...

Archive ouverte: Article de revue

Bah, Thierno-Moussa | 2022-12-10

International audience. Herein, we report the use of nanostructured crystalline silicon as a thermoelectric material and its integration into thermoelectric devices. The proof-of-concept relies on the partial suppre...

Effet de l'angle de charge sur les harmoniques d'efforts magnétiques dans l...

Archive ouverte: Communication dans un congrès

Le Besnerais, Jean | 2016-06-07

International audience. Cet article étudie l'effet de l'angle de charge sur les efforts harmoniques de Maxwell (tangentiels et radiaux) et les bruits et vibrations d'origine magnétique dans deux machines synchrones ...

Further investigation of convolutional neural networks applied in computati...

Archive ouverte: Article de revue

Gong, Ruohan | 2022-04-07

International audience. Convolutional neural networks (CNN) have shown great potentials and have been proven to be an effective tool for some image-based deep learning tasks in the field of computational electromagn...

Thermal and hygroscopic study of hemp concrete in real ambient conditions

Archive ouverte: Article de revue

Asli, M. | 2021-04

International audience

Opal: an open source ray-tracing propagation simulator for electromagnetic ...

Archive ouverte: Article de revue

Egea-Lopez, Esteban | 2021-11-17

International audience. Accurate characterization and simulation of electromagnetic propagation can be obtained by ray-tracing methods, which are based on a high frequency approximation to the Maxwell equations and ...

Chargement des enrichissements...