Volume - 7 | Issue - 3 | september 2025
Published
12 August, 2025
Deepfake is an environment in which AI technology is used to manipulate original digital videos, making them appear real. This poses a serious issue regarding the trustworthiness of digital data. The goal of the study is to create a reliable method to detect deepfakes using enhanced learning models named EfficientB0 and RESNET50. Frames are extracted from videos, and a HAAR cascade is applied to locate the face region, which is then sent as a dataset to train the model. This study utilized an open dataset from Kaggle to perform the experiment. The performance of the study is quantitatively measured using F1-score, accuracy, recall, and precision. The experiment showed that the hybrid model achieved superior prediction results of 89.08% compared to the standalone models. Hence, this study confirms that the proposed model works well to identify fake videos, which may help increase trust in digital data.
KeywordsHaar Cascade Artificial Intelligence Transfer Learning Deep Learning Facial Recognition Synthetic Media