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Neural network based benchmarks in the quality assessment of message digest algorithms for digital signatures based secure Internet communications

机译:基于神经网络的基准,用于基于数字签名的安全Internet通信的消息摘要算法的质量评估

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The strength of data integrity, message authentication and pseudonym generation mechanisms in the design of secure multimedia communication applications over the Internet relies on the quality of the message digest algorithms used in the digital signatures construction/verification process. In this paper, we propose neural network based evaluation benchmarks to assess the message digest function quality since there is lack of practical tests to be applied to message digest algorithms in the emerging field of designing secure information and communication systems especially for the delivery of multimedia content, where the issues of copyright protection and security in transactions are outstanding. These assessment tests are suggested here along with other ones derived from well known statistical and information theoretic methods, such as entropy test, and thus comprise a suitable practical evaluation methodology.
机译:在Internet上安全多媒体通信应用程序的设计中,数据完整性,消息身份验证和化名生成机制的强度取决于在数字签名构建/验证过程中使用的消息摘要算法的质量。在本文中,我们提出了基于神经网络的评估基准,以评估消息摘要功能的质量,因为在设计安全信息和通信系统(尤其是用于多媒体内容的交付)的新兴领域中,缺乏适用于消息摘要算法的实际测试,其中版权保护和交易安全性问题十分突出。在此建议这些评估测试,以及从众所周知的统计和信息理论方法(例如熵测验)衍生而来的其他评估测试,从而构成一种合适的实用评估方法。

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