Robust deepfake detection using Long Short-Term Memory networks for video authentication

Developments achieved in recent years have propelled techniques for generating and manipulating multimedia content to attain an exceptionally high degree of realism. According to a survey, 25 percent of the videos viewers watch are fake. The increasingly blurred distinction between authentic and sy...

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Main Authors: Ravi Kishan Surapaneni, Hameed Syed, Harshitha Kakarala, Venkata Sai Srikar Yaragudipati
Format: Article
Language:English
Published: Lublin University of Technology 2025-03-01
Series:Informatyka, Automatyka, Pomiary w Gospodarce i Ochronie Środowiska
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Online Access:https://ph.pollub.pl/index.php/iapgos/article/view/6777
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author Ravi Kishan Surapaneni
Hameed Syed
Harshitha Kakarala
Venkata Sai Srikar Yaragudipati
author_facet Ravi Kishan Surapaneni
Hameed Syed
Harshitha Kakarala
Venkata Sai Srikar Yaragudipati
author_sort Ravi Kishan Surapaneni
collection DOAJ
description Developments achieved in recent years have propelled techniques for generating and manipulating multimedia content to attain an exceptionally high degree of realism. According to a survey, 25 percent of the videos viewers watch are fake. The increasingly blurred distinction between authentic and synthetic media presents significant security concerns, with the potential for exploitation in various domains. These threats encompass the manipulation of public opinion during electoral processes, perpetration of fraudulent activities, dissemination of disinformation to discredit individuals or entities, and the facilitation of blackmail schemes. Detecting fakes is tricky and difficult for viewers who are watching them, with studies showing that over 70 percent struggle to identify them accurately. To counter this issue, we envision this project whose primary goal is to construct a model that is capable of distinguishing between deepfake and authentic videos. Our proposed model operates at the video level, analyzing entire videos at once to provide a comprehensive assessment. The dataset utilized for training and evaluation is sourced from repositories such as DFDC, FaceForensics++ and Celeb-DF. The dataset sourced from DFDC and Celeb-Df are converted into frames from videos, in this architecture first face recognition tool is used for detecting the faces, followed by ResNext for feature extraction and then LSTM is used to classify the videos.
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institution Kabale University
issn 2083-0157
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publishDate 2025-03-01
publisher Lublin University of Technology
record_format Article
series Informatyka, Automatyka, Pomiary w Gospodarce i Ochronie Środowiska
spelling doaj-art-a342d9bbb507493496d5233b598648952025-08-20T03:41:01ZengLublin University of TechnologyInformatyka, Automatyka, Pomiary w Gospodarce i Ochronie Środowiska2083-01572391-67612025-03-0115110.35784/iapgos.6777Robust deepfake detection using Long Short-Term Memory networks for video authenticationRavi Kishan Surapaneni0https://orcid.org/0000-0001-5145-2574Hameed Syed1https://orcid.org/0009-0009-7979-1864Harshitha Kakarala2https://orcid.org/0009-0008-2320-3560Venkata Sai Srikar Yaragudipati3https://orcid.org/0009-0005-5814-0115Velagapudi Ramakrishna Siddhartha Engineering College, Department of Computer Science and EngineeringVelagapudi Ramakrishna Siddhartha Engineering College, Department of Computer Science and EngineeringVelagapudi Ramakrishna Siddhartha Engineering College, Department of Computer Science and EngineeringVelagapudi Ramakrishna Siddhartha Engineering College, Department of Computer Science and Engineering Developments achieved in recent years have propelled techniques for generating and manipulating multimedia content to attain an exceptionally high degree of realism. According to a survey, 25 percent of the videos viewers watch are fake. The increasingly blurred distinction between authentic and synthetic media presents significant security concerns, with the potential for exploitation in various domains. These threats encompass the manipulation of public opinion during electoral processes, perpetration of fraudulent activities, dissemination of disinformation to discredit individuals or entities, and the facilitation of blackmail schemes. Detecting fakes is tricky and difficult for viewers who are watching them, with studies showing that over 70 percent struggle to identify them accurately. To counter this issue, we envision this project whose primary goal is to construct a model that is capable of distinguishing between deepfake and authentic videos. Our proposed model operates at the video level, analyzing entire videos at once to provide a comprehensive assessment. The dataset utilized for training and evaluation is sourced from repositories such as DFDC, FaceForensics++ and Celeb-DF. The dataset sourced from DFDC and Celeb-Df are converted into frames from videos, in this architecture first face recognition tool is used for detecting the faces, followed by ResNext for feature extraction and then LSTM is used to classify the videos. https://ph.pollub.pl/index.php/iapgos/article/view/6777deepfake detectiondeep fake videofeature recognitiondeep learningResNextLong Short-Term Memory
spellingShingle Ravi Kishan Surapaneni
Hameed Syed
Harshitha Kakarala
Venkata Sai Srikar Yaragudipati
Robust deepfake detection using Long Short-Term Memory networks for video authentication
Informatyka, Automatyka, Pomiary w Gospodarce i Ochronie Środowiska
deepfake detection
deep fake video
feature recognition
deep learning
ResNext
Long Short-Term Memory
title Robust deepfake detection using Long Short-Term Memory networks for video authentication
title_full Robust deepfake detection using Long Short-Term Memory networks for video authentication
title_fullStr Robust deepfake detection using Long Short-Term Memory networks for video authentication
title_full_unstemmed Robust deepfake detection using Long Short-Term Memory networks for video authentication
title_short Robust deepfake detection using Long Short-Term Memory networks for video authentication
title_sort robust deepfake detection using long short term memory networks for video authentication
topic deepfake detection
deep fake video
feature recognition
deep learning
ResNext
Long Short-Term Memory
url https://ph.pollub.pl/index.php/iapgos/article/view/6777
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AT hameedsyed robustdeepfakedetectionusinglongshorttermmemorynetworksforvideoauthentication
AT harshithakakarala robustdeepfakedetectionusinglongshorttermmemorynetworksforvideoauthentication
AT venkatasaisrikaryaragudipati robustdeepfakedetectionusinglongshorttermmemorynetworksforvideoauthentication