Global Multidisciplinary Journal

Open Access Peer Review International
Open Access

Machine-Learning-Driven Physiological Identity Verification Frameworks within Risk-Coverage Sector: High-Integrity Access Validation, Policy Adherence

4 Department of Computer Science and Engineering National Institute of Technology Delhi New Delhi, India
4 School of Computing and Information Systems Indian Institute of Information Technology, Allahabad Prayagraj, Uttar Pradesh, India

Abstract

The rapid digitization of the risk-coverage sector, including insurance and financial protection systems, has intensified the need for robust identity verification mechanisms that ensure secure access, fraud prevention, and regulatory compliance. Traditional authentication systems, primarily reliant on static credentials, are increasingly inadequate against sophisticated threats such as identity theft, impersonation, and biometric spoofing. This paper proposes a comprehensive machine-learning-driven physiological identity verification framework that integrates multimodal biometric signals, including speech characteristics, heart rate variability (HRV), and behavioral physiological markers, to enhance authentication accuracy and system integrity.

The study synthesizes theoretical principles from speech signal processing, acoustic modeling, and physiological monitoring to develop a hybrid verification architecture. Foundational techniques such as Mel-frequency cepstral coefficients (MFCC), articulatory feature modeling, and vocal tract resonance analysis are integrated with physiological indicators like electrocardiogram (ECG)-derived HRV and EEG-based cognitive state detection. Machine learning models, including supervised classification and adaptive feature modeling, are applied to extract discriminative identity patterns across modalities. The framework further incorporates adaptive policy compliance mechanisms aligned with regulatory requirements in the insurance sector.

The proposed system addresses key challenges including variability in biometric signals, environmental noise, user-state dependency (e.g., fatigue), and adversarial spoofing attempts. Through analytical modeling and simulated evaluation, the framework demonstrates improved resilience, higher authentication precision, and enhanced robustness against fraud scenarios compared to unimodal systems. The integration of physiological and behavioral signals enables continuous authentication, thereby reducing reliance on one-time verification.

The findings suggest that multimodal machine-learning-based physiological verification systems can significantly strengthen identity validation processes in high-risk environments. However, challenges related to data privacy, computational overhead, and system scalability remain critical considerations. This research contributes a novel interdisciplinary framework bridging speech processing, biomedical signal analysis, and machine learning, offering a scalable pathway for secure and compliant identity verification in modern risk-coverage infrastructures.

Keywords

References

📄 S. Abtahi, B. Hariri, and S. Shirmohammadi, “Driver drowsiness monitoring based on yawning detection ”, Proc. of IEEE International Conf. on Instrumentation and Measurement Technology, 2011.
📄 B. S. Atal, “Automatic recognition of speakers from their voices,” Proceedings of the IEEE, vol. 64, no. 4, pp. 460–475, 1976.
📄 S. Davis and P. Mermelstein, “Comparison of parametric representations for monosyllabic word recognition in continuously spoken sentences,” IEEE Transactions on Acoustics, Speech, and Signal Processing, vol. 28, no. 4, pp. 357–366, 1980.
📄 J. Dang, K. Honda, and H. Suzuki, “Morphological and acoustical analysis of the nasal and the paranasal cavities,” J. Acousti. Soc. Am., vol. 96, no. 4, pp. 2088–2100, 1994.
📄 J. Dang and K. Honda, “Acoustic characteristics of the human paranasal sinuses derived from transmission characteristic measurement and morphological observation,” J. Acousti. Soc. Am., vol. 100, no. 5, pp. 3374–3383, 1996.
📄 J. Dang and K. Honda, “An improved vocal tract model of vowel production implementing piriform resonance and transvelar nasal coupling,” in Proc. ICSLP96, pp. 965–968, Philadelphia, USA, 1996.
📄 J. Dang and K. Honda, “Acoustic characteristics of the piriform fossa in models and humans,” J. Acousti. Soc. Am., vol. 101, no. 1, pp. 456–465, 1997.
📄 G. Fant, Acoustic theory of speech production, Number 2. Walter de Gruyter, 1970.
📄 R. Laheri, "AI-Enhanced Biometric Systems for Insurance: Secure Authentication and Regulatory Compliance," 2025 2nd International Conference on Artificial Intelligence and Knowledge Discovery in Concurrent Engineering (ICECONF), Chennai, India, 2025, pp. 1-6, doi: 10.1109/ICECONF65644.2025.11379513.
📄 K.-Y. Leung, M.-W. Mak, M.-H. Siu, and S.-Y. Kung, “Adaptive articulatory feature-based conditional pronunciation modeling for speaker verification,” Speech Communication, vol. 48, no. 1, pp. 71–84, 2006.
📄 X. Lu and J. Dang, “An investigation of dependencies between frequency components and speaker characteristics for text-independent speaker identification,” Speech Communication, vol. 50, no. 4, pp. 312–322, 2008.
📄 E. Michail, A. Kokonozi, I. Chouvarda, and N. Maglaveras, “EEG and HRV markers of sleepiness and loss of control during car driving,” Proc. of IEEE EMBS Conference, pp. 2566–2569, Aug. 2008.
📄 N. Rodriguez-Ibanez, “Changes in heart rate variability indexes due to drowsiness in professional drivers measured in a real environment,” Computing in Cardiology, pp. 913–916, 2012.
📄 Task Force of European Society of Cardiology and North American Society of Pacing and Electrophysiology, “Heart rate variability: Staodards of measurement, physiological interpretation, and clinical use,” European Heart Journal, vol. 17, pp. 354–381, 1996.
📄 M. Tasaki, M. Watanabe, H. Wang, and D. Wei, “Evaluation of drowsiness during driving using electrocardiogram - a driving simulation study,” Proc. of IEEE International Conf. on Computer and Information Technology, pp. 1480–1485 2010.
📄 X. Zhou, D. Garcia-Romero, R. Duraiswami, C. Espy-Wilson, and S. Shamma, “Linear versus mel frequency cepstral coefficients for speaker recognition,” in Proc. IEEE-ASRU, pp. 559–564, 2011.

How to Cite

Dr. Arvind Mehta, & Dr. Priya Sharma. (2026). Machine-Learning-Driven Physiological Identity Verification Frameworks within Risk-Coverage Sector: High-Integrity Access Validation, Policy Adherence. Global Multidisciplinary Journal, 5(02), 109-119. https://www.grpublishing.org/journals/index.php/gmj/article/view/375

Most read articles by the same author(s)

1 2 3 4 5 6 7 8 9 10 > >> 

Similar Articles

1-10 of 57

You may also start an advanced similarity search for this article.