ROSE: Real One-Stage Effort to Detect the Fingerprint Singular Point
Based on Multi-scale Spatial Attention
- URL: http://arxiv.org/abs/2003.03918v1
- Date: Mon, 9 Mar 2020 04:16:31 GMT
- Title: ROSE: Real One-Stage Effort to Detect the Fingerprint Singular Point
Based on Multi-scale Spatial Attention
- Authors: Liaojun Pang, Jiong Chen, Fei Guo, Zhicheng Cao, and Heng Zhao
- Abstract summary: We propose a Real One-Stage Effort to detect fingerprint singular points more accurately and efficiently.
In this paper, we name the proposed algorithm ROSE for short, in which the multi-scale spatial attention, the Gaussian heatmap and the variant of focal loss are applied together.
Experimental results on the datasets FVC2002 DB1 and NIST SD4 show that our ROSE outperforms the state-of-art algorithms in terms of detection rate, false alarm rate and detection speed.
- Score: 7.711679004460418
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Detecting the singular point accurately and efficiently is one of the most
important tasks for fingerprint recognition. In recent years, deep learning has
been gradually used in the fingerprint singular point detection. However,
current deep learning-based singular point detection methods are either
two-stage or multi-stage, which makes them time-consuming. More importantly,
their detection accuracy is yet unsatisfactory, especially in the case of the
low-quality fingerprint. In this paper, we make a Real One-Stage Effort to
detect fingerprint singular points more accurately and efficiently, and
therefore we name the proposed algorithm ROSE for short, in which the
multi-scale spatial attention, the Gaussian heatmap and the variant of focal
loss are applied together to achieve a higher detection rate. Experimental
results on the datasets FVC2002 DB1 and NIST SD4 show that our ROSE outperforms
the state-of-art algorithms in terms of detection rate, false alarm rate and
detection speed.
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