In general, deep learning models use to make informed decisions immensely. Developed models are mainly based on centralized servers, which face several issues, including transparency, traceability, reliability, security, and privacy. In this research, we identify a research gap in a distributed nature-based access control that can solve those issues. The innovative technology blockchain could fill this gap and provide a robust solution. Blockchain's immutable and distributed nature designs a useful framework in various domains such as medicine, finance, and government, which can also provide access control as opposed to centralized methods that rely on trusted third parties to access the resources. In existing frameworks, a traditional access control approach is developed using blockchain, which depends on predefined policies and permissions that are not reliable. In this research, we propose DLACB: Deep Learning Based Access Control Using Blockchain, which utilizes a deep learning access control mechanism to determine a user's permissions on a given resource. This proposed framework authenticates the users and logs the access requests on the blockchain to recognize malicious users. The results show that this proposed framework operates correctly for all possible scenarios.
翻译:一般而言,深度学习模型可以极大地帮助做出有根据的决策。这些开发模型主要基于集中式服务器,面临的问题包括透明度、可追溯性、可靠性、安全性和隐私性等。在这项研究中,我们确定了分布式访问控制方面的研究差距,分散的技术——区块链可以填补这一差距并提供一个强大的解决方案。区块链的不可变性和分布式性质为各个领域(如医学、金融和政府)提供了一个有用的框架,可以提供访问控制,而不是依赖于信任的第三方访问资源的集中式方法。在现有的框架中,已经提出了使用区块链开发的传统访问控制方法,其基于预定义的策略和权限,这是不可靠的。在这项研究中,我们提出了DLACB:基于区块链的深度学习访问控制,它利用深度学习访问控制机制来确定用户在给定资源上的权限。这个提出的框架对用户进行身份认证,并将访问请求记录在区块链上以识别恶意用户。结果表明,这个提出的框架可以正确地处理所有可能的情况。