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Richa Singh

Researcher at Indian Institute of Technology, Jodhpur

Publications -  493
Citations -  11353

Richa Singh is an academic researcher from Indian Institute of Technology, Jodhpur. The author has contributed to research in topics: Facial recognition system & Deep learning. The author has an hindex of 53, co-authored 422 publications receiving 9145 citations. Previous affiliations of Richa Singh include Indian Institutes of Technology & University of Virginia.

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Ocular biometrics

TL;DR: A path forward is proposed to advance the research on ocular recognition by improving the sensing technology, heterogeneous recognition for addressing interoperability, utilizing advanced machine learning algorithms for better representation and classification, and developing algorithms for ocular Recognition at a distance.
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Biometric quality: a review of fingerprint, iris, and face

TL;DR: The analysis of the characteristic function of quality and match scores shows that a careful selection of complimentary set of quality metrics can provide more benefit to various applications of biometric quality.
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Memetically Optimized MCWLD for Matching Sketches With Digital Face Images

TL;DR: An automated algorithm to extract discriminating information from local regions of both sketches and digital face images is presented and yields better identification performance compared to existing face recognition algorithms and two commercial face recognition systems.
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Face recognition with disguise and single gallery images

TL;DR: This paper presents a face recognition algorithm that addresses two major challenges: when an individual intentionally alters the appearance and features using disguises, and when limited gallery images are available for recognition.
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Recognizing Surgically Altered Face Images Using Multiobjective Evolutionary Algorithm

TL;DR: A multiobjective evolutionary granular algorithm is proposed to match face images before and after plastic surgery and yields high identification accuracy as compared to existing algorithms and a commercial face recognition system.