Profile Image

Raid Rafi Omar Al-Nima

Research Interests

Machine Learning and Artificial Intelligence

Deep Learning

Deep Reinforcement Learning

Artificial Neural Network

Genetic Algorithm

Gender MALE
Place of Work Technical Engineering College for Computer and AI / Mosul
Department Department of Artificial Intelligence Engineering Techniques
Position Researcher
Qualification Ph.d
Speciality AI
Email raidrafi3@ntu.edu.iq
Phone 07512307279
Address Tel Al-Rumman, Ninawa, Mosul, Iraq

2 +

Scientific Creativity Medal from the North Europe Academy for Science and Scientific Research – Denmark
working experience

Academic Qualification

PhD
Dec 15, 2017 - Mar 28, 2025

Doctorate in AI

Publications

Individual Recognition Based on Multi-Spectrum Palm Images
Feb 17, 2026

Journal The Scholar Journal for Science & Technology

Issue 5

Volume 2

Abstract: Individual recognition based on palm images is such an interesting subject. In this paper, multi-spectrums for full-palm images are considered. The spectra of 460nm and 940nm are employed. Each spectrum provides special features. That is, the spectrum of 460nm affords full-palm textures, and the spectrum of 940nm presents full-palm veins. These facilities are utilized here, where an Artificial Intelligence (AI) approach is suggested. The suggested approach consists of four Deep Learning (DL) networks. Each network is determined for a certain full-palm image, as there are four types of images: right hand full-palm textures, left hand full-palm textures, right-hand full-palm veins, and left-hand fullpalm veins. Then, the outputs are fused to provide the final recognition decision. Two datasets are exploited; both are from the Chinese Academy of Sciences Institute of Automation's (CASIA) Multi-Spectral Palmprint Image Database (version. 1.0), where full-palm images of the two spectra 460nm and 940nm are obtained. High performances are achieved after applying the suggested approach. Individual recognition based on palm images is such an interesting subject. In this paper, multi-spectrums for full-palm images are considered. The spectra of 460nm and 940nm are employed. Each spectrum provides special features. That is, the spectrum of 460nm affords full-palm textures, and the spectrum of 940nm presents full-palm veins. These facilities are utilized here, where an Artificial Intelligence (AI) approach is suggested. The suggested approach consists of four Deep Learning (DL) networks. Each network is determined for a certain full-palm image, as there are four types of images: right hand full-palm textures, left hand full-palm textures, right-hand full-palm veins, and left-hand fullpalm veins. Then, the outputs are fused to provide the final recognition decision. Two datasets are exploited; both are from the Chinese Academy of Sciences Institute of Automation's (CASIA) Multi-Spectral Palmprint Image Database (version. 1.0), where full-palm images of the two spectra 460nm and 940nm are obtained. High performances are achieved after applying the suggested approach.

Read Publication

Anticipating Atrial Fibrillation Signal Using Efficient Algorithm
Jan 1, 2021

Journal International Journal of Online and Biomedical Engineering (iJOE)

Multi-gradient features and elongated quinary pattern encoding for image-based facial expression recognition
Dec 1, 2017

Journal Pattern recognition

Finger texture biometric verification exploiting multi-scale sobel angles local binary pattern features and score-based fusion
Nov 1, 2017

Journal Digital Signal Processing

Conferences

Conferences

A Novel Biometric Approach To Generate ROC Curve From The Probabilistic Neural Network
May 16, 2016 - May 19, 2016

Country Turkey

Location