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Lightweight Deepfake Detection Based on Multi-Feature Fusion

Siddiqui Muhammad Yasir, Hyun Kim

2025Applied Sciences19 citationsDOIOpen Access PDF

Abstract

Deepfake technology utilizes deep learning (DL)-based face manipulation techniques to seamlessly replace faces in videos, creating highly realistic but artificially generated content. Although this technology has beneficial applications in media and entertainment, misuse of its capabilities may lead to serious risks, including identity theft, cyberbullying, and false information. The integration of DL with visual cognition has resulted in important technological improvements, particularly in addressing privacy risks caused by artificially generated “deepfake” images on digital media platforms. In this study, we propose an efficient and lightweight method for detecting deepfake images and videos, making it suitable for devices with limited computational resources. In order to reduce the computational burden usually associated with DL models, our method integrates machine learning classifiers in combination with keyframing approaches and texture analysis. Moreover, the features extracted with a histogram of oriented gradients (HOG), local binary pattern (LBP), and KAZE bands were integrated to evaluate using random forest, extreme gradient boosting, extra trees, and support vector classifier algorithms. Our findings show a feature-level fusion of HOG, LBP, and KAZE features improves accuracy to 92% and 96% on FaceForensics++ and Celeb-DF(v2), respectively.

Topics & Concepts

Computer scienceLocal binary patternsArtificial intelligencePattern recognition (psychology)HistogramSupport vector machineRandom forestGradient boostingHistogram of oriented gradientsMachine learningBoosting (machine learning)Computer visionImage (mathematics)Generative Adversarial Networks and Image SynthesisFace recognition and analysisDigital Media Forensic Detection