Mounir Sehad

Work place: School EPMI, 13 Boulevard de l’Hautil, 95092 Cergy Pontoise Cedex, Paris, France

E-mail: sehad_m@yahoo.fr

Website:

Research Interests: Image Compression, Image Manipulation, Image Processing

Biography

Mounir Sehad received his Magister degree in Electronic from the Mouloud MAMMERI University of Tizi-Ouzou (Algeria) in 2003. He is researcher and member of the analysis and modeling of random phenomena laboratory (LAMPA). His area of research interest is image processing, meteorology and remote sensing

Author Articles
Image Segmentation Method for Identifying Convective and Stratiform Rain using MSG SEVIRI Data

By Mounir Sehad Mourad Lazri Soltane Ameur Jean Michel Brucker Fethi Ouallouche

DOI: https://doi.org/10.5815/ijigsp.2014.07.04, Pub. Date: 8 Jun. 2014

This paper provides a new method for the classification of rainfall areas in convective and stratiform rain using MSG/SEVIRI (Spinning Enhanced Visible and Infrared) data. The proposed approach is based on spectral and temporal properties of clouds. The spectral parameters used are: brightness temperature (BT) and brightness temperature differences (BTDs), and the temporal parameter (RCT10.8) is the rate of change of (BT) in the 10.8µm channel over two consecutive images. The developed rain area classification technique (RACT-DN) is based on two multilayer perceptron neural networks (MLP-D for daytime and MLP-N for nighttime) which relies on the correlation of satellite data with convective and stratiform rain. The two algorithms (MLP-D and MLP-N) are trained using as reference data from ground meteorological radar over northern Algeria. The results show that RACT-DN classifier gives accurate discrimination between convective and stratiform areas during daytime and nighttime.

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Infrared and Microwave Image Fusion for Rainfall Detection over Northern Algeria

By Fethi Ouallouche Mourad Lazri Soltane Ameur Jean Michel Brucker Mounir Sehad

DOI: https://doi.org/10.5815/ijigsp.2014.06.02, Pub. Date: 8 May 2014

Rain areas delineation proposed in this paper is based on the image fusion from geostationary Meteosat Second Generation (MSG) satellite, with the low-earth orbiting passive Tropical Rainfall Measuring Mission (TRMM) satellite. The fusion technique described in this work used an artificial neural network (ANN). It's has been developed to detect instantaneous rainfall by using information from the IR images of MSG satellite and from TRMM Microwave Imager (TMI). The study is carried out over north of Algeria. Seven spectral parameters are used as input data of ANN to identify raining or non - raining pixels. Corresponding data of raining /non-raining pixels are taken from a PR (precipitation radar) issued from TRMM. Results from the developed scheme are compared with the results of SI method (Scattering Index) taken as reference method. The results show that the developed model performs very well and overcomes the deficiencies of use a single satellite.

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