Abstract

Background: Remote authentication in current networks such as IoT that connects many end-devices of low capacity must be light, accurate and scalable without threaten security. In general, biometrics is the most reliable way to authenticate users because of its efficient results in many applications. Objective: The biometric data is expressed by a feature vector that should be extracted and secured by reliable techniques. This paper proposes a suitable extraction and encryption scheme in the aim to make the authentication light, accurate, scalable and secure. Method: As extraction technique, principle component analysis with a nonlinear block average quantization is used to reduce the feature vector length in the aim to increase the rapidity and the scalability. As encryption technique, the fuzzy commitment and the fuzzy vault with Hamming and Reed-Solomon codes are used in to increase security. These cryptosystems are tested with multi-biometric modalities to make the validation more credible. Results: Experimental results are analyzed, validated and compared to other works according to several conventional and new recognition rates. Analysis is also done in terms of computation time to validate the lightness of our findings. It is shown that the proposed scheme finds a compromise between the coveted features. Conclusion: Our biometric cryptosystems ensure a secure, light, precise and scalable remote authentication. These properties can be achieved by using PCA technique with nonlinear coefficient quantization and fuzzy schemes with the appropriate correcting-code.

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