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Moha-qadar Artificial Intelligence, Deep Learning, Image Processing and Natural Language Processing (NLP)

I hold a master’s degree in Computer Engineering from Fırat University and a bachelor’s degree from Karadeniz Technical University. My research mainly focuses on Artificial Intelligence (AI) and Deep Learning, particularly in Image Processing, Natural Language Processing (NLP),

Available for freelance projects
Moha-qadar

My Skills

Technologies and tools I work with

C
python
kotlin
C#
PHP
Django
DataBase

Published Articles

A selection of my recent publications

Facial Expression Based Emotion Recognition

Human communication predominantly relies on spoken and written language; however, nonverbal cues, such as facial expressions, play a critical role in conveying emotions. This study details the development and evaluation of a deep learning model for Facial Emotion Recognition (FER) utilizing the VGG-16 architecture and the FER2013 dataset which includes over 35,000 facial images taken in natural settings, depicting seven emotions. The objective was to enhance recognition, accuracy and performance beyond the existing benchmarks in the literature. Transfer learning was employed by leveraging pre-trained VGG-16 weights, with the classification layers restructured and fine-tuned for emotion categorization. Comprehensive preprocessing, including normalization and data augmentation, was implemented to improve the model generalization and mitigate overfitting. The final model achieved an accuracy of 85.77%, surpassing several previous VGG-16-based FER models. The model performance was assessed using metrics such as accuracy, precision, recall, and F1-score, confirming the model's reliability. Integral to this success was the incorporation of hyperparameter tuning and regularization techniques, notably, dropout and early stopping. The model demonstrated the capability to extract salient features from low-resolution images, thereby supporting its robustness. Additionally,the potential use cases of the model in areas such as transportation safety, security systems, and customer interaction analysis can address in the Future study to enhance the model's real-world applicability by utilizing more diverse datasets and advanced architectures

Hibrit ResNeXt ve LSTM Mimarisi Kullanılarak Deepfake Video Algılama

The growing spread of deepfake materials presents a serious threat to individual privacy, media credibility, and public trust. Existing detection methods often struggle to generalize across various manipulation techniques and video quality levels. This study proposes a hybrid A hybrid architecture based on deep learning is introduced, which leverages the spatial feature extraction strengths of ResNeXt-50 along with the temporal sequence modeling capabilities of LSTM networks. The suggested framework handles video input by initially obtaining frame-wise features via a pretrained ResNeXt-50 backbone and then examining temporal dynamics through an LSTM layer. Experimental evaluations were conducted using benchmark datasets, including DFDC, Celeb-DF, FaceForensics++, and DFD. Findings indicate that the developed model significantly outperforms conventional CNN-LSTM combinations, attaining 95.7% accuracy on the DFDC dataset and above 90% on the other datasets. This research highlights the practical applicability of hybrid deep learning techniques in real-world video authentication systems and contributes a high-performance solution to the growing field of synthetic media detection.

Featured Projects

A showcase of my recent work

Digital Accounting Platform

Digital Accounting Platform

About Digital Accounting Platform The Digital Accounting Platform was built to simplify financial management for small businesses, NGOs, freelancers, and organizations worldwide. Our goal is to provide a free, simple

İnsani Yardım ve Kurban Platformu

İnsani Yardım ve Kurban Platformu

Amacımız: Kurban kesimi, gıda yardımı gibi insani yardım faaliyetlerimizi; kısa videolar, fotoğraflar ve hikayelerle duyuran, bağış toplayan ve gönüllü kaydeden profesyonel bir web sitesi.

Somali public health

Somali public health

Halk sağlığı doktorlarının tavsiyelerini ve halkın anlayabileceği basit bilgileri paylaşan, aynı zamanda halkın da güvenilir şekilde bilgi aldığı bir web platformu. Hastalık Kategorileri Bölümü Her yazı “kategoriye”

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