R. Uma Maheshwari, S. Kumarganesh, Shree K V M, A. Gopalakrishnan, K. Selvi, B. Paulchamy, P. Rishabavarthani, K. Martin Sagayam, Binay Kumar Pandey, Digvijay Pandey
{"title":"先进的等离子体共振增强型生物传感器用于全面实时检测和分析深层伪造内容","authors":"R. Uma Maheshwari, S. Kumarganesh, Shree K V M, A. Gopalakrishnan, K. Selvi, B. Paulchamy, P. Rishabavarthani, K. Martin Sagayam, Binay Kumar Pandey, Digvijay Pandey","doi":"10.1007/s11468-024-02407-0","DOIUrl":null,"url":null,"abstract":"<p>The rapid advancement of deep learning technologies has led to the proliferation of deepfake content, posing significant challenges for digital security, privacy, and the integrity of information. Traditional detection methods often struggle with real-time analysis and distinguishing sophisticated deepfakes. This study introduces an advanced plasmonic resonance-enhanced biosensor designed for comprehensive real-time detection and analysis of deepfake content, leveraging the unique properties of plasmonic materials to enhance sensitivity and accuracy. The biosensor system integrates plasmonic resonance techniques with machine learning algorithms to detect subtle anomalies in digital content. Plasmonic nanostructures are engineered to interact with specific optical signatures of authentic and manipulated media. The sensor’s response is captured and processed using a convolutional neural network (CNN) trained on a diverse dataset of real and deepfake images and videos. The system’s performance is evaluated based on detection accuracy, response time, and the ability to adapt to evolving deepfake techniques. The plasmonic resonance-enhanced biosensor demonstrated a significant improvement in detection capabilities compared to traditional methods. The system achieved an overall detection accuracy of 98.7%, with a false positive rate of 1.2% and a false negative rate of 0.5%. Real-time analysis showed an average response time of 0.8 s per frame, enabling efficient processing of video content. The adaptive learning capability of the CNN allowed the biosensor to maintain high accuracy even as new deepfake generation techniques were introduced. The advanced plasmonic resonance-enhanced biosensor presents a robust solution for real-time detection and analysis of deepfake content. Its high sensitivity and accuracy, coupled with rapid response times, make it an effective tool for safeguarding digital media integrity. Future work will focus on optimizing the sensor’s integration into various platforms and expanding its capabilities to detect a broader range of digital manipulations. This technology holds promise for enhancing security measures across multiple domains, including media verification, cybersecurity, and forensic analysis.</p>","PeriodicalId":736,"journal":{"name":"Plasmonics","volume":null,"pages":null},"PeriodicalIF":3.3000,"publicationDate":"2024-07-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Advanced Plasmonic Resonance-enhanced Biosensor for Comprehensive Real-time Detection and Analysis of Deepfake Content\",\"authors\":\"R. Uma Maheshwari, S. Kumarganesh, Shree K V M, A. Gopalakrishnan, K. Selvi, B. Paulchamy, P. Rishabavarthani, K. Martin Sagayam, Binay Kumar Pandey, Digvijay Pandey\",\"doi\":\"10.1007/s11468-024-02407-0\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>The rapid advancement of deep learning technologies has led to the proliferation of deepfake content, posing significant challenges for digital security, privacy, and the integrity of information. Traditional detection methods often struggle with real-time analysis and distinguishing sophisticated deepfakes. This study introduces an advanced plasmonic resonance-enhanced biosensor designed for comprehensive real-time detection and analysis of deepfake content, leveraging the unique properties of plasmonic materials to enhance sensitivity and accuracy. The biosensor system integrates plasmonic resonance techniques with machine learning algorithms to detect subtle anomalies in digital content. Plasmonic nanostructures are engineered to interact with specific optical signatures of authentic and manipulated media. The sensor’s response is captured and processed using a convolutional neural network (CNN) trained on a diverse dataset of real and deepfake images and videos. The system’s performance is evaluated based on detection accuracy, response time, and the ability to adapt to evolving deepfake techniques. The plasmonic resonance-enhanced biosensor demonstrated a significant improvement in detection capabilities compared to traditional methods. The system achieved an overall detection accuracy of 98.7%, with a false positive rate of 1.2% and a false negative rate of 0.5%. Real-time analysis showed an average response time of 0.8 s per frame, enabling efficient processing of video content. The adaptive learning capability of the CNN allowed the biosensor to maintain high accuracy even as new deepfake generation techniques were introduced. The advanced plasmonic resonance-enhanced biosensor presents a robust solution for real-time detection and analysis of deepfake content. 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Advanced Plasmonic Resonance-enhanced Biosensor for Comprehensive Real-time Detection and Analysis of Deepfake Content
The rapid advancement of deep learning technologies has led to the proliferation of deepfake content, posing significant challenges for digital security, privacy, and the integrity of information. Traditional detection methods often struggle with real-time analysis and distinguishing sophisticated deepfakes. This study introduces an advanced plasmonic resonance-enhanced biosensor designed for comprehensive real-time detection and analysis of deepfake content, leveraging the unique properties of plasmonic materials to enhance sensitivity and accuracy. The biosensor system integrates plasmonic resonance techniques with machine learning algorithms to detect subtle anomalies in digital content. Plasmonic nanostructures are engineered to interact with specific optical signatures of authentic and manipulated media. The sensor’s response is captured and processed using a convolutional neural network (CNN) trained on a diverse dataset of real and deepfake images and videos. The system’s performance is evaluated based on detection accuracy, response time, and the ability to adapt to evolving deepfake techniques. The plasmonic resonance-enhanced biosensor demonstrated a significant improvement in detection capabilities compared to traditional methods. The system achieved an overall detection accuracy of 98.7%, with a false positive rate of 1.2% and a false negative rate of 0.5%. Real-time analysis showed an average response time of 0.8 s per frame, enabling efficient processing of video content. The adaptive learning capability of the CNN allowed the biosensor to maintain high accuracy even as new deepfake generation techniques were introduced. The advanced plasmonic resonance-enhanced biosensor presents a robust solution for real-time detection and analysis of deepfake content. Its high sensitivity and accuracy, coupled with rapid response times, make it an effective tool for safeguarding digital media integrity. Future work will focus on optimizing the sensor’s integration into various platforms and expanding its capabilities to detect a broader range of digital manipulations. This technology holds promise for enhancing security measures across multiple domains, including media verification, cybersecurity, and forensic analysis.
期刊介绍:
Plasmonics is an international forum for the publication of peer-reviewed leading-edge original articles that both advance and report our knowledge base and practice of the interactions of free-metal electrons, Plasmons.
Topics covered include notable advances in the theory, Physics, and applications of surface plasmons in metals, to the rapidly emerging areas of nanotechnology, biophotonics, sensing, biochemistry and medicine. Topics, including the theory, synthesis and optical properties of noble metal nanostructures, patterned surfaces or materials, continuous or grated surfaces, devices, or wires for their multifarious applications are particularly welcome. Typical applications might include but are not limited to, surface enhanced spectroscopic properties, such as Raman scattering or fluorescence, as well developments in techniques such as surface plasmon resonance and near-field scanning optical microscopy.