2023
DOI: 10.3390/jcp3020013
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Deep Learning and Machine Learning, Better Together Than Apart: A Review on Biometrics Mobile Authentication

Abstract: Throughout the past several decades, mobile devices have evolved in capability and popularity at growing rates while improvement in security has fallen behind. As smartphones now hold mass quantities of sensitive information from millions of people around the world, addressing this gap in security is crucial. Recently, researchers have experimented with behavioral and physiological biometrics-based authentication to improve mobile device security. Continuing the previous work in this field, this study identifi… Show more

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Cited by 8 publications
(3 citation statements)
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“…Subsequently, a machine learning classifier receives these features and uses their interpretation to decide whether the current user is authorized or an intruder. A machine learning classifier can be constructed for a system in several ways [11].…”
Section: Non-intrusive User Experiencementioning
confidence: 99%
“…Subsequently, a machine learning classifier receives these features and uses their interpretation to decide whether the current user is authorized or an intruder. A machine learning classifier can be constructed for a system in several ways [11].…”
Section: Non-intrusive User Experiencementioning
confidence: 99%
“…This lack of cybersecurity professionals is not limited to the government [16]. Additionally, automated systems such as authentication using machine learning are not enough to make up for this discrepancy [17], [18], [19]. Thus, considering the evident lack of cybersecurity professionals, it would be prudent for individuals to learn to protect themselves.…”
Section: Literature Reviewmentioning
confidence: 99%
“…It also outperforms them when used on known faces, with accuracy reaching 98.24%. One limitation is that the identity of the face must be known for detection [9]. This research also presents a new deepfake and real video dataset, Vox-DeepFake.…”
Section: Identity-focusedmentioning
confidence: 99%