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Miad Faezipour

Researcher at University of Bridgeport

Publications -  139
Citations -  3259

Miad Faezipour is an academic researcher from University of Bridgeport. The author has contributed to research in topics: Intrusion detection system & Steganography. The author has an hindex of 25, co-authored 132 publications receiving 2416 citations. Previous affiliations of Miad Faezipour include Jawaharlal Nehru University & University of Texas at Dallas.

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Sleep Stage Classification Using EEG Signal Analysis: A Comprehensive Survey and New Investigation

TL;DR: A novel and efficient technique that can be implemented in an embedded hardware device to identify sleep stages using new statistical features applied to 10 s epochs of single-channel EEG signals is presented.
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Eye Tracking and Head Movement Detection: A State-of-Art Survey

TL;DR: A state-of-art survey for eye tracking and head movement detection methods proposed in the literature is presented and examples of different fields of applications for both technologies, such as human-computer interaction, driving assistance systems, and assistive technologies are investigated.
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Progress and challenges in intelligent vehicle area networks

TL;DR: Vehicle area networks form the backbone of future intelligent transportation systems and will be the focus of research and development for the next generation of smart cities.
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Features Dimensionality Reduction Approaches for Machine Learning Based Network Intrusion Detection

TL;DR: A Multi-Class Combined performance metric is proposed to compare various multi-class and binary classification systems through incorporating FAR, DR, Accuracy, and class distribution parameters and a uniform distribution based balancing approach is developed to handle the imbalanced distribution of the minority class instances in the CICIDS2017 network intrusion dataset.
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Noninvasive Real-Time Automated Skin Lesion Analysis System for Melanoma Early Detection and Prevention

TL;DR: The experimental results show that the proposed system is efficient, achieving classification of the benign, atypical, and melanoma images with accuracy of 96.3%, 95.7%, and 97.5%, respectively.