2023
DOI: 10.11591/ijece.v13i2.pp2240-2258
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Three level intrusion detection system based on conditional generative adversarial network

Abstract: <span lang="EN-US">Security threat protection is important in the internet of things (IoT) applications since both the connected device and the captured data can be hacked or hijacked or both at the same time. To tackle the above-mentioned problem, we proposed three-level intrusion detection system conditional generative adversarial network (3LIDS-CGAN) model which includes four phases such as first-level intrusion detection system (IDS), second-level IDS, third-level IDS, and attack type classification.… Show more

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“…GANs enhance the quality of audio signals by reducing noise, improving clarity, and aiding in speech recognition tasks [16]. In cybersecurity, GANs are instrumental in both fake image detection [13] and intrusion detection [17]. GANs contribute to identifying manipulated images and generating synthetic data representing potential security threats, thereby aiding in the development of robust intrusion detection systems.…”
Section: Generative Adversarial Network For Data Augmentationmentioning
confidence: 99%
“…GANs enhance the quality of audio signals by reducing noise, improving clarity, and aiding in speech recognition tasks [16]. In cybersecurity, GANs are instrumental in both fake image detection [13] and intrusion detection [17]. GANs contribute to identifying manipulated images and generating synthetic data representing potential security threats, thereby aiding in the development of robust intrusion detection systems.…”
Section: Generative Adversarial Network For Data Augmentationmentioning
confidence: 99%