School of Information Science and Engineering, Electronic Engineering, Yunnan University, Chenggong District, Kunming, 650000, China.
Breast Surgery Department, The Third Hospital Affiliated to the Medical University of Kunming, Kunming, 605118, Yunnan Province, China.
Biomed Eng Online. 2018 Oct 1;17(1):136. doi: 10.1186/s12938-018-0559-4.
Orientation field (OF) plays a very significant role in automatic fingerprint recognition systems. Many algorithms have been proposed for the estimation of fingerprints' OF but it is hard to solve the dilemma of correcting spurious ridge structure and avoiding singularity location deviation, especially for poor images. So far, the following drawbacks still need to be solved for OF construction methods for practical application: (1) How to adaptively choose block scales to resolve the contradiction between accuracy and anti-noise, since small scale is beneficial to accuracy but is sensitive to noise, while large scale is more resistant to noise, but the accuracy is deteriorated. (2) How to construct the genuine OF in the areas close-by singular points and to evade singularity location deviation? Current block based methods give spurious OF estimates in the area near singular points because these areas have large curvature thus the detected singular points deviate from the genuine localizations. When these singular points are used as the anchor for referencing minutiae, it makes the average error of matching or recognition even larger. Therefore, it is essentials to construct the genuine OF in the areas close-by singular points and to evade singularity deviation.
To overcome the above-mentioned limitations, a novel method, combining a weighted multi-scale composite window (WMCM) with a hierarchical smoothing strategy has been proposed for the computation of fingerprint OF. This method mainly contains two procedures: the approximate OF estimation and the hierarchical OF smoothing. In the first procedure, a series of OFs are established under multiple scales of composite windows by using a gradient based method then a coarse OF is estimated using the weight of each scale determined by a squared gradient consistency. In the second procedure, the OF is first quantized into a two-digitized orientation zone and a two-orientation-zone filtering strategy is adapted to the OF blocks based on a filtering mask obtained after eliminating the isolated blocks. In the end a similar three-digitized orientation zone is performed to obtain an accurate and smooth OF. To validate the performance, the proposed method has been applied to OF computation using the FVC2004 databases and three experiments are designed. Experiment 1 aims to validate whether the weighted multi-scale composite window can balance the dilemma of accuracy and robustness more effectively than the previous works do. Experiment 2 is designed to examine whether the hierarchical smoothing method can correct the spurious ridge flow and preserve the genuine localization of singular points. The purpose of experiment 3 is to test the performance of the proposed method on OF reconstruction in low quality fingerprint images. The fingerprint databases FVC 2004 DB1-DB4 are employed in this study.
The results of experiment I shows that the proposed method is capable to extract the information of OF reliably and it is more robust against singularity localization deviation in comparison with the other three gradient based methods. The results of experiment II indicates that the proposed smoothing method can balance the contradiction in correcting spurious ridge structures and preserving genuine singularity localization. The results of experiment III illustrates that our approach combing WMCW with the hierarchical smoothing method is capable to extract the information of OF ridge reliably and it is more robust against singularity deviation in comparison with the other three gradient based methods. In a word, the experiment results demonstrate that the proposed method can correct spurious ridge structure and meanwhile avoid singularity deviation compared with the previous works.
A novel gradient based algorithm has been proposed which is more reliable for the estimation of the ridge information for fingerprint OF and is more accurate in preserving the singularity localization. Compared with the previously proposed gradient based methods, the advantages of the proposed RBSF lie in three aspects. Firstly a weighted multi-scale composite window is put forward to replace the single window used by conventional gradient based methods and to adaptively choose the scales of the blocks. Secondly, a hierarchical smoothing strategy is proposed to enhance the OF by using the two-orientation-zone filtering and the three-orientation-zone filtering, aiming to correct the spurious ridges and preserving the genuine location of singular points. Finally, three experiments are designed to test the proposed algorithm together with other popular gradient based methods on real fingerprint images, which are selected from different categories and all are suffering from obvious noise effects. All the experiment results show that the proposed method is superior with respect to reliable OF construction and avoiding singularity localization deviation.
方向场(OF)在自动指纹识别系统中起着非常重要的作用。已经提出了许多用于估计指纹 OF 的算法,但很难解决纠正虚假脊结构和避免奇异点位置偏差的困境,尤其是对于质量较差的图像。到目前为止,对于实际应用中的 OF 构造方法,仍然需要解决以下几个缺点:(1)如何自适应地选择块尺度,以解决准确性和抗噪声之间的矛盾,因为小尺度有利于准确性但对噪声敏感,而大尺度对噪声更具抵抗力,但准确性会降低。(2)如何在奇异点附近的区域构建真实的 OF,并避免奇异点位置偏差?当前基于块的方法在奇异点附近的区域给出虚假的 OF 估计,因为这些区域曲率较大,因此检测到的奇异点偏离真实位置。当这些奇异点用作参考细节的锚点时,会使匹配或识别的平均误差更大。因此,构建奇异点附近区域的真实 OF 并避免奇异点偏差至关重要。
为了克服上述限制,提出了一种新的方法,该方法将加权多尺度复合窗口(WMCM)与分层平滑策略相结合,用于计算指纹 OF。该方法主要包含两个步骤:近似 OF 估计和分层 OF 平滑。在第一步中,通过基于梯度的方法在多个复合窗口的尺度下建立一系列 OF,然后使用通过平方梯度一致性确定的每个尺度的权重来估计粗糙 OF。在第二步中,首先将 OF 量化为两个二值化方向区域,并根据经过孤立块消除后获得的滤波掩模,基于两个方向区域滤波策略对 OF 块进行滤波。最后,进行类似的三个二值化方向区域处理,以获得准确平滑的 OF。为了验证性能,将提出的方法应用于 FVC2004 数据库中的 OF 计算,并进行了三个实验。实验 1 旨在验证加权多尺度复合窗口是否比以前的工作更有效地平衡准确性和稳健性之间的困境。实验 2 旨在检查分层平滑方法是否可以纠正虚假脊流并保留奇异点的真实定位。实验 3 的目的是测试提出的方法在低质量指纹图像中 OF 重建的性能。本研究使用 FVC 2004 DB1-DB4 指纹数据库。
实验 1 的结果表明,与其他三个基于梯度的方法相比,所提出的方法能够可靠地提取 OF 的信息,并且在抗奇异点定位偏差方面更稳健。实验 2 的结果表明,所提出的平滑方法能够平衡纠正虚假脊结构和保留真实奇异点定位之间的矛盾。实验 3 的结果表明,我们的方法结合 WMCW 与分层平滑方法能够可靠地提取 OF 脊的信息,并且在抗奇异点偏差方面比其他三个基于梯度的方法更稳健。总之,实验结果表明,与以前的工作相比,所提出的方法可以纠正虚假脊结构,同时避免奇异点偏差。
提出了一种新的基于梯度的算法,该算法更可靠地估计指纹 OF 的脊信息,并且更准确地保留奇异点定位。与以前提出的基于梯度的方法相比,所提出的 RBSF 的优点在于三个方面。首先,提出了加权多尺度复合窗口来替代传统基于梯度的方法中使用的单个窗口,并自适应地选择块的尺度。其次,提出了分层平滑策略,通过两方向区域滤波和三方向区域滤波来增强 OF,旨在纠正虚假脊并保留奇异点的真实位置。最后,设计了三个实验来测试所提出的算法与其他流行的基于梯度的方法在真实指纹图像上的性能,这些图像选自不同的类别,都受到明显的噪声影响。所有实验结果均表明,与其他基于梯度的方法相比,所提出的方法在可靠的 OF 构建和避免奇异点定位偏差方面具有优势。