Journal Cerita: Creative Education of Research in Information Technology and Artificial Informatics
Vol 11 No 1 (2025): Journal CERITA : Creative Education of Research in Information Technology and Ar

Implementasi Metode Hibrida CNN-ELM Dalam Deteksi Citra Deepfake

Sanjaya, Alvian Dwi (Unknown)
Anggraeny, Fetty Tri (Unknown)
Mumpuni, Retno (Unknown)



Article Info

Publish Date
08 Feb 2025

Abstract

The existence of Artificial Intelligence (AI) today has played a significant role in human life. In addition to bringing positive impacts, AI also has negative effects that can be detrimental to humans, one of which is Deepfake. Deepfake is the use of deep learning to forge someone's face in an image or video. This research introduces a hybrid method combining Convolutional Neural Network (CNN) and Extreme Learning Machine (ELM) to detect deepfake images. The goal of this research is to create image detection to verify the authenticity of an image in order to avoid deepfake. With the advantage of feature extraction from the CNN model and the efficient computational speed of the ELM model, the CNN-ELM hybrid method can accurately and efficiently train and test data. This research uses various scenarios to find the best parameter configuration. The results of this hybrid method achieved an average accuracy of 85.77% using 600 hidden neurons, RMSprop optimization, and ReLu activation function. This research also developed a simple GUI to allow free input of photos to verify their authenticity. This research can be one approach to detecting deepfake images.

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Journal Info

Abbrev

cerita

Publisher

Subject

Computer Science & IT Control & Systems Engineering

Description

Journal CERITA: Creative Education Of Research in Information Technology And Artificial Informatics adalah jurnal ilmiah nasional yang diterbitkan oleh Universitas Raharja Tangerang guna mempublikasikan ringkasan hasil penelitian civitas akademika pada bidang informatika dan ...