Abstract:
We propose a fully automatic minutiae extractor, called MinutiaeNet, based on deep neural networks with compact feature representation for fast comparison of minutiae set...Show MoreMetadata
Abstract:
We propose a fully automatic minutiae extractor, called MinutiaeNet, based on deep neural networks with compact feature representation for fast comparison of minutiae sets. Specifically, first a network, called CoarseNet, estimates the minutiae score map and minutiae orientation based on convolutional neural network and fingerprint domain knowledge (enhanced image, orientation field, and segmentation map). Subsequently, another network, called FineNet, refines the candidate minutiae locations based on score map. We demonstrate the effectiveness of using the fingerprint domain knowledge together with the deep networks. Experimental results on both latent (NIST SD27) and plain (FVC 2004) public domain fingerprint datasets provide comprehensive empirical support for the merits of our method. Further, our method finds minutiae sets that are better in terms of precision and recall in comparison with state-of-the-art on these two datasets. Given the lack of annotated fingerprint datasets with minutiae ground truth, the proposed approach to robust minutiae detection will be useful to train network-based fingerprint matching algorithms as well as for evaluating fingerprint individuality at scale. MinutiaeNet is implemented in Tensorflow: https://github.com/luannd/MinutiaeNet
Published in: 2018 International Conference on Biometrics (ICB)
Date of Conference: 20-23 February 2018
Date Added to IEEE Xplore: 16 July 2018
ISBN Information:
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- IEEE Keywords
- Index Terms
- Deep Network ,
- Cognitive Domains ,
- Neural Network ,
- Convolutional Neural Network ,
- Deep Neural Network ,
- Precision And Recall ,
- Segmentation Map ,
- Lack Of Datasets ,
- Score Map ,
- Field Orientation ,
- Deep Learning ,
- Central Region ,
- Image Quality ,
- Input Image ,
- Precise Location ,
- Object Detection ,
- Data Augmentation ,
- Post-processing Step ,
- Network-based Approach ,
- Vanishing Gradient Problem ,
- Non-maximum Suppression ,
- Hard Threshold ,
- Orientation Maps ,
- Central Patch ,
- Strong Classifier ,
- Central Loss ,
- Orientation Estimation ,
- F1 Values ,
- Candidate Generation ,
- Residual Learning
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Deep Network ,
- Cognitive Domains ,
- Neural Network ,
- Convolutional Neural Network ,
- Deep Neural Network ,
- Precision And Recall ,
- Segmentation Map ,
- Lack Of Datasets ,
- Score Map ,
- Field Orientation ,
- Deep Learning ,
- Central Region ,
- Image Quality ,
- Input Image ,
- Precise Location ,
- Object Detection ,
- Data Augmentation ,
- Post-processing Step ,
- Network-based Approach ,
- Vanishing Gradient Problem ,
- Non-maximum Suppression ,
- Hard Threshold ,
- Orientation Maps ,
- Central Patch ,
- Strong Classifier ,
- Central Loss ,
- Orientation Estimation ,
- F1 Values ,
- Candidate Generation ,
- Residual Learning
- Author Keywords