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Title Enhancing Security In Public Spaces Through Generative Adversarial Networks (Gans)
ID_Doc 23933
Authors Ponnusamy S.; Antari J.; Bhaladhare P.; Potgantwar A.; Kalyanaraman S.
Year 2024
Published Enhancing Security in Public Spaces Through Generative Adversarial Networks (GANs)
DOI http://dx.doi.org/10.4018/9798369335970
Abstract As the demand for data security intensifies, the vulnerabilities become glaring, exposing sensitive information to potential threats. In this tumultuous landscape, Generative Adversarial Networks (GANs) emerge as a groundbreaking solution, transcending their initial role as image generators to become indispensable guardians of data security. Within the pages of Enhancing Security in Public Spaces Through Generative Adversarial Networks (GANs), readers are guided through the intricate world of GANs, unraveling their unique design and dynamic adversarial training. The book presents GANs not merely as a technical marvel but as a strategic asset for organizations, offering a comprehensive solution to fortify cybersecurity, protect data privacy, and mitigate the risks associated with evolving cyber threats. It navigates the ethical considerations surrounding GANs, emphasizing the delicate balance between technological advancement and responsible use. Tailored for a diverse audience, the book speaks directly to organizations, researchers, government agencies, cybersecurity professionals, data privacy advocates, AI specialists, educational institutions, regulatory bodies, cybersecurity solution providers, and the general public. It provides actionable insights on integrating GANs into various sectors, offering a roadmap for leveraging their capabilities in healthcare, finance, smart cities, and beyond. Dive into the future of data security, armed with the knowledge and practical applications presented in this transformative book, as it unfolds the potential of GANs to safeguard our digital infrastructure in an era of unprecedented challenges. © 2024 by IGI Global. All rights reserved.
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