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Medicine Group Review Article Article ID: igmin231

A Study of Multi-Pose Effects On a Face Recognition System

Forensic Medicine DOI10.61927/igmin231 Affiliation

Affiliation

    Yichao Cao, Shanghai Research Institute of Criminal Science and Technology, Shanghai Key Laboratory of Crime Scene Evidence, Shanghai, PR China, Email: [email protected]

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Abstract

Interpersonal and intrapersonal face variation interference caused by multiple poses is challenging for distance-based face recognition systems. In this paper, we investigate the face-feature distance distribution for Chinese multi-pose faces. The simulation shows that the number of individuals in the gallery database will greatly affect the recognition performance for near-profile face images. It also provides a prediction of the Top-N occurrence rates in different gallery-size environments.

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References

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