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Long term facial parts tracking in thermal imaging for uncooperative emotion recognition

Research Authors
Eslam Mostafa,
Aly Farag,
Ahmed Shalaby,
Asem M. Ali,
Travis Gault,
Ali Mahmoud,
Research Department
Research Journal
International Conference on Biometrics: Theory, Applications and Systems
Research Member
Research Rank
3
Research Year
2013

A Facial Features Detector Integrating Holistic Facial Information and Part-based Model

Research Abstract
We propose a facial landmarks detector, in which a partbased model is incorporated with holistic face information. In the part-based model, the face is modeled by the appearance of different face parts and their geometric relation. The appearance is described by pixel normalized difference descriptor. This descriptor is the lowest computational complexity as compared with existing state-of-theart while it has a similar accuracy. On the other hand, to model the geometric relation between the face parts, the complex Bingham distribution is adapted. This is because the complex Bingham distribution has a symmetric property so it is invariant to rotation, scale, and translation. After that the global information is incorporated with the local part-based model using a regression model. The regression model estimates the displacement to the final face shape model. The the proposed detector is evaluated on two datasets. Experimental results show that it outperforms the state-of-the-art approaches in detecting facial landmarks accurately.
Research Authors
Eslam Mostafa,
Asem M. Ali,
Aly Farag
Research Department
Research Journal
Computer Vision and Pattern Recognition Workshop on Biometrics
Research Member
Research Rank
3
Research Year
2015

Learning A NonLinear Combination of Mahalanobis Distances Using Statistical Inference For Similarity Measure

Research Abstract
In this work, we learn a similarity measure that discriminates between inter-class and intra-class samples based on a statistical inference perspective. Where, a nonlinear combination of Mahalanobis is proposed to reflect the properties of a likelihood ratio test. Since an object appearance is influenced by the identity of the object and variations in the capturing process, we represent the feature vector, which is the difference between two samples in the differences space, as a sample that is drawn from a mixture of many distributions. This mixture consists of the identities distribution and other distributions of the variations in the capturing process, in case of dissimilar samples. However, in case of similar samples, the mixture consists of the variations in the capturing process distributions only. Using this representation the proposed similarity measure accurately discriminates between inter-class and intra-class samples. To highlight the good performance of the proposed similarity measure, it is tested on different computer vision applications: face verification and person re-identification. To illustrate how the proposed learning method can easily be used on large scale datasets, experiments are conducted on different challenging datasets: LFW, PubFig, ETHZ, and VIPeR. Moreover, in these experiments, we evaluate different stages e.g., features detector, descriptor type and descriptor dimension, which constitute the face verification pipeline. The experimental results confirm that our learning method outperforms the state-of-the-art.
Research Authors
Eslam Mostafaa,
Asem M. Ali,
Aly Farag
Research Department
Research Journal
IET Computer Vision Journal
Research Member
Research Rank
1
Research Year
2015

OPTIMAL PHOTOVOLTAIC WATER PUMPING SYSTEM PERFORMANCE UNDER DIFFERENT OPERATING CONDITIONS

Research Abstract
This paper presents dc photovoltaic pumping system. The system consists of photovoltaic (PV) generator, boost converter and permanent magnet (PM) dc motor-pump set. Each part of the system is modelled. Photovoltaic generator parameters are extracted based on data-sheet parameters. Boost converter is designed to operate in continuous conduction mode (CCM) and controlled using incremental conductance (IC) algorithm for maximum power point tracking (MPPT).The system is simulated using Matlab/Simulink. The proposed system is studied under direct coupling and maximum power point tracking conditions. The results show a very good performance MPPT compared with direct coupling. The system is tested under varying conditions of temperature and radiation.
Research Authors
G. El-Saady , El-Nobi A. Ibrahim , Mostafa Ahmed
Research Department
Research Journal
Journal of Engineering Sciences
Assiut University
Faculty of Engineering
Research Member
Research Pages
16-32
Research Rank
2
Research Vol
Vol. 43, No. 1
Research Website
http://www.jes.aun.edu.eg/
Research Year
2015

OPTIMAL PHOTOVOLTAIC WATER PUMPING SYSTEM PERFORMANCE UNDER DIFFERENT OPERATING CONDITIONS

Research Abstract
This paper presents dc photovoltaic pumping system. The system consists of photovoltaic (PV) generator, boost converter and permanent magnet (PM) dc motor-pump set. Each part of the system is modelled. Photovoltaic generator parameters are extracted based on data-sheet parameters. Boost converter is designed to operate in continuous conduction mode (CCM) and controlled using incremental conductance (IC) algorithm for maximum power point tracking (MPPT).The system is simulated using Matlab/Simulink. The proposed system is studied under direct coupling and maximum power point tracking conditions. The results show a very good performance MPPT compared with direct coupling. The system is tested under varying conditions of temperature and radiation.
Research Authors
G. El-Saady , El-Nobi A. Ibrahim , Mostafa Ahmed
Research Department
Research Journal
Journal of Engineering Sciences
Assiut University
Faculty of Engineering
Research Pages
16-32
Research Rank
2
Research Vol
Vol. 43, No. 1
Research Website
http://www.jes.aun.edu.eg/
Research Year
2015

OPTIMAL PHOTOVOLTAIC WATER PUMPING SYSTEM PERFORMANCE UNDER DIFFERENT OPERATING CONDITIONS

Research Abstract
This paper presents dc photovoltaic pumping system. The system consists of photovoltaic (PV) generator, boost converter and permanent magnet (PM) dc motor-pump set. Each part of the system is modelled. Photovoltaic generator parameters are extracted based on data-sheet parameters. Boost converter is designed to operate in continuous conduction mode (CCM) and controlled using incremental conductance (IC) algorithm for maximum power point tracking (MPPT).The system is simulated using Matlab/Simulink. The proposed system is studied under direct coupling and maximum power point tracking conditions. The results show a very good performance MPPT compared with direct coupling. The system is tested under varying conditions of temperature and radiation.
Research Authors
G. El-Saady , El-Nobi A. Ibrahim , Mostafa Ahmed
Research Department
Research Journal
Journal of Engineering Sciences
Assiut University
Faculty of Engineering
Research Member
Research Pages
16-32
Research Rank
2
Research Vol
Vol. 43, No. 1
Research Website
http://www.jes.aun.edu.eg/
Research Year
2015

Modeling and Maximum Power Point Tracking with Ripple Control of Photovoltaic System

Research Abstract
Abstract - This paper presents parameters determination of photovoltaic (PV) module based on data-sheet parameters using Newton-Raphson iterative method. The characteristic of photovoltaic module are drawn based on the extracted parameters. Simulation and maximum power point tracking (MPPT) are developed using Matlab/Simulink. Incremental conductance (INC) method for MPPT is used to control a dc-dc boost converter with resistive load. Parameters of boost converter are designed to operate in continuous conduction mode. State- space averaging technique is used to control standalone PV module and obtain inductance value for certain amount of ripple in boost inductor current at different temperature and irradiance conditions.
Research Authors
G.El-Saady, El-Nobi A.Ibrahim, Mostafa Ahmed
Research Department
Research Journal
16th International Middle- East Power Systems Conference -MEPCON'2014
Research Member
Research Rank
3
Research Year
2014

Modeling and Maximum Power Point Tracking with Ripple Control of Photovoltaic System

Research Abstract
Abstract - This paper presents parameters determination of photovoltaic (PV) module based on data-sheet parameters using Newton-Raphson iterative method. The characteristic of photovoltaic module are drawn based on the extracted parameters. Simulation and maximum power point tracking (MPPT) are developed using Matlab/Simulink. Incremental conductance (INC) method for MPPT is used to control a dc-dc boost converter with resistive load. Parameters of boost converter are designed to operate in continuous conduction mode. State- space averaging technique is used to control standalone PV module and obtain inductance value for certain amount of ripple in boost inductor current at different temperature and irradiance conditions.
Research Authors
G.El-Saady, El-Nobi A.Ibrahim, Mostafa Ahmed
Research Department
Research Journal
16th International Middle- East Power Systems Conference -MEPCON'2014
Research Rank
3
Research Year
2014

Modeling and Maximum Power Point Tracking with Ripple Control of Photovoltaic System

Research Abstract
Abstract - This paper presents parameters determination of photovoltaic (PV) module based on data-sheet parameters using Newton-Raphson iterative method. The characteristic of photovoltaic module are drawn based on the extracted parameters. Simulation and maximum power point tracking (MPPT) are developed using Matlab/Simulink. Incremental conductance (INC) method for MPPT is used to control a dc-dc boost converter with resistive load. Parameters of boost converter are designed to operate in continuous conduction mode. State- space averaging technique is used to control standalone PV module and obtain inductance value for certain amount of ripple in boost inductor current at different temperature and irradiance conditions.
Research Authors
G.El-Saady, El-Nobi A.Ibrahim, Mostafa Ahmed
Research Department
Research Journal
16th International Middle- East Power Systems Conference -MEPCON'2014
Research Member
Research Rank
3
Research Year
2014

The combined effect of time harmonics and winding discreteness on the thrust of a linear induction motor

Research Authors
M.A. Saleh, H.I. Abou-Faddan, A.M. Makky and M.S. El-Gendi
Research Department
Research Journal
Electric Machines and Electro-mechanics
Research Pages
PP. 125-134
Research Rank
2
Research Vol
Vol. 5, Pt. 2
Research Year
1980
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