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arxiv 2209.03846 v1 pith:F6K4RS4L submitted 2022-09-08 cs.CV

Transformer based Fingerprint Feature Extraction

classification cs.CV
keywords fingerprintapproachesextractionapproachfeaturegloballocalcorresponding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Fingerprint feature extraction is a task that is solved using either a global or a local representation. State-of-the-art global approaches use heavy deep learning models to process the full fingerprint image at once, which makes the corresponding approach memory intensive. On the other hand, local approaches involve minutiae based patch extraction, multiple feature extraction steps and an expensive matching stage, which make the corresponding approach time intensive. However, both these approaches provide useful and sometimes exclusive insights for solving the problem. Using both approaches together for extracting fingerprint representations is semantically useful but quite inefficient. Our convolutional transformer based approach with an in-built minutiae extractor provides a time and memory efficient solution to extract a global as well as a local representation of the fingerprint. The use of these representations along with a smart matching process gives us state-of-the-art performance across multiple databases. The project page can be found at https://saraansh1999.github.io/global-plus-local-fp-transformer.

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