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The contribution of this research is a cryptographic key (re)generation scheme based on biometrics. The scheme is comprised of the following components: A client/server model is developed for privacy preserving cryptographic key regeneration; where the decryption key - no (encrypted) personal data - is stored in the server. Generate stable cryptographic keys from biometric data that is unstable in nature. The proposed framework differs from prior work in that user-dependent transforms are utilized to generate more compact and distinguishable features. Thereby, a longer and more stable bitstream can be generated as the cryptographic key.
Therefore, the generated registration code may only be applied to foreign software. Security key generator in ios. The specific details need to be tested.