级联优化CNN的手指静脉图像质量评估
Finger vein image quality assessment based on cascaded fine-tuning convolutional neural network
- 2019年24卷第6期 页码:902-913
收稿:2018-09-04,
修回:2018-11-21,
纸质出版:2019-06-16
DOI: 10.11834/jig.180511
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收稿:2018-09-04,
修回:2018-11-21,
纸质出版:2019-06-16
移动端阅览
目的
2
针对手动设计的手指静脉质量特征计算过程复杂、鲁棒性差、表达效果不理想等问题,提出了基于级联优化CNN(卷积神经网络)进行多特征融合的手指静脉质量评估方法。
方法
2
以半自动化方式对手指静脉公开数据库MMCBNU_6000进行质量标注并用R-SMOTE(radom-synthetic minority over-sampling technique)算法平衡类别;将深度学习中的CNN结构应用到手指静脉质量评估并研究了不同的网络深度对表征手指静脉质量的影响;受到传统方法中将二值图像和灰度图像结合进行质量评估的启发,设计了两种融合灰度图像和二值图像的质量特征的模型:多通道CNN(MC-CNN)和级联优化CNN(CF-CNN),MC-CNN在训练和测试时均需要同时输入二值图像和灰度图像,CF-CNN在训练时分阶段输入二值图像和灰度图像,测试时只需输入灰度图像。
结果
2
本文设计的3种简单CNN结构(CNN-
K
,
K
=3,4,5)在MMCBNU_6000数据库上对测试集图像的分类正确率分别为93.31%、93.94%、85.63%,以灰度图像和二值图像分别作为CNN-4的输入在MMCBNU_6000数据库上对测试集图像的分类正确率对应为93.94%、91.92%,MC-CNN和CF-CNN在MMCBNU_6000数据库上对测试集图像的分类正确率分别为91.44%、94.62%,此外,与现有的其他算法相比,CF-CNN在MMCBNU_6000数据库上对高质量测试图像、低质量测试图像、整体测试集图像的分类正确率均最高。
结论
2
实验结果表明,基于CF-CNN学习到的融合质量特征比现有的手工特征和基于单一静脉形式学习到的特征表达效果更好,可以有效地对手指静脉图像进行高、低质量的区分。
Objective
2
Finger vein recognition
an emerging biometric identification technology
has attracted the attention of numerous researchers. However
the quality of several collected finger vein images is not ideal due to individual differences
changes in the collection environment
and differences in the performance of acquisition equipment. In a finger vein recognition system
low-quality images seriously affect feature extraction and matching
resulting in poor identification performance of the system. In an application scene that requires the establishment of a standard template library of personal finger vein information in real life
registered low-quality images seriously influence the use of the finger vein standard template library. Therefore
correct quality assessment after collecting finger vein images is necessary to filter low-quality images and select high-quality ones to be inputted to a finger vein recognition system or to register a finger vein standard template library. To address the problems of considerable computation complexity
weak robustness
and unsatisfactory expression and the issue that the hand-crafted finger vein quality characteristic is sensitive to various factors
we develop a finger vein quality assessment method. These problems are addressed via multi-feature fusion
which is primarily based on the cascaded fine-tuning convolutional neural network (CNN).
Method
2
Finger vein image quality assessment methods based on deep learning require many labeled finger vein images. However
existing finger vein image public databases only provide finger vein images and do not mark them for quality. Thus
the first step should be labeling. In this study
the public finger vein database MMCBNU_6000 is labeled for quality representation in a semi-automated manner. This manner is based on the calculation of the number of veins in a finger vein image
followed by manual correction. Such an annotation method is more accurate
time saving
and cost effective than a pure manual annotation method. However
the collected low-quality finger vein images are fewer than the high-quality finger vein images in the actual scene; hence
the R-SMOTE algorithm is employed to balance all categories. The excellent capabilities of deep neural networks have been proven in the fields of image and speech. However
with regard to finger vein quality assessment
most existing methods are based on hand-crafted features
and only a few methods gain quality features via self-learning. In this study
the CNN structure in deep learning is applied to finger vein quality assessment
and the depth of the CNN framework is investigated for its contribution to quality representation. Deeper networks may not be good at representing the quality characteristics of finger vein images. The best network depth is confirmed after an experiment and used as the basis for subsequent research. Meanwhile
inspired by the combination of binary and grayscale images in traditional quality evaluation
two models
namely
multi-column CNN (MC-CNN) and cascaded fine-tuning CNN (CF-CNN)
are designed to merge the quality features of grayscale and binary images. When MC-CNN is trained and tested
binary and grayscale images must be inputted together to the model. As for CF-CNN
binary and grayscale images are inputted to the model in stages during training
and only the grayscale image is inputted during testing. Notably
we input the binary finger vein image to the network and verify that the quality characteristics of the binary finger vein help distinguish high-and low-quality finger vein images. After verification
we obtain a basis to believe that the combination of binary and grayscale images through CNN produces remarkable results.
Result
2
Several experimental results for testing are set on the MMCBNU_6000 database. The classification accuracy rates of the CNN-
K
(
K
=3
4
5) designed in this study are 93.31%
93.94%
and 85.63%
respectively; the classification accuracy rates of CNN-4 with grayscale and binary images as the input are 93.94% and 91.92%
and the classification accuracy rates of MC-CNN and CF-CNN are 91.44% and 94.62%
respectively. The experimental results of the simple CNN structure show that CNN-3 has the highest classification accuracy rate for high-quality images
CNN-5 has the highest classification accuracy rate for low-quality images
and CNN-4 has the highest classification accuracy rate for the entire test set. The experimental results of CNN-4 show that the grayscale vein form performs better than the binary vein form. Meanwhile
the experimental results of the complex CNN structure show that CF-CNN performs better than MC-CNN. Compared with other existing algorithms
CF-CNN has the highest classification accuracy rate for high-quality
low-quality
and overall test images on the MMCBNU_6000 database.
Conclusion
2
First
three simple CNN structures are designed and used for finger vein quality assessment. The comprehensive performance of CNN-4 is found to be better than that of CNN-3 and CNN-5
indicating that the network is not as deep as possible
and the structure of the network should be adjusted to suit the research questions. Second
the performance difference when gray and binary images are used for the same network is compared. Results show that both images characterize the vein quality to varying degrees. Finally
to fuse the quality features of grayscale and binary images
two fusion models (MC-CNN and CF-CNN) are proposed. CF-CNN
an end-to-end quality evaluation model of finger veins
is better than MC-CNN and has a simpler structure. In summary
our method demonstrates state-of-the-art performance and obtains better features than those from existing manual and single vein forms.
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