Performance of fingerprint recognition algorithms substantially rely on fine features extracted from fingerprints. Apart from minutiae and ridge patterns, pore features have proven to be usable for fingerprint recognition. Although features from minutiae and ridge patterns are quite attainable from low-resolution images, using pore features is practical only if the fingerprint image is of high resolution which necessitates a model that enhances the image quality of the conventional 500 ppi legacy fingerprints preserving the fine details. To find a solution for recovering pore information from low-resolution fingerprints, we adopt a joint learning-based approach that combines both super-resolution and pore detection networks. Our modified single image Super-Resolution Generative Adversarial Network (SRGAN) framework helps to reliably reconstruct high-resolution fingerprint samples from low-resolution ones assisting the pore detection network to identify pores with a high accuracy. The network jointly learns a distinctive feature representation from a real low-resolution fingerprint sample and successfully synthesizes a high-resolution sample from it. To add discriminative information and uniqueness for all the subjects, we have integrated features extracted from a deep fingerprint verifier with the SRGAN quality discriminator. We also add ridge reconstruction loss, utilizing ridge patterns to make the best use of extracted features. Our proposed method solves the recognition problem by improving the quality of fingerprint images. High recognition accuracy of the synthesized samples that is close to the accuracy achieved using the original high-resolution images validate the effectiveness of our proposed model.
翻译:指纹识别法的性能在很大程度上依赖于从指纹中提取的精细特征。除了细微和脊椎模式外,孔状特征已证明可用于指纹识别。虽然细微和脊脊特征的特征从低分辨率图像中可以相当容易实现,但使用孔状特征只有在指纹图像具有高分辨率才能实际操作,这需要一种模型来提高常规500ppi遗留指纹的图像质量,保存精细细节。为了找到从低分辨率指纹中提取孔状信息的解决办法,我们采取了一种基于学习的联合方法,将超级分辨率和孔状检测网络结合起来。我们修改过的单一图像超级分辨率和脊脊椎特征已被证明可用于指纹识别。虽然我们修改过的单一图像超级分辨率和脊脊椎特征的特征能够从低分辨率图像中可靠地重建高分辨率指纹样本样本,帮助孔状检测网络以高精确度识别孔状。该网络从真正的低分辨率指纹样本样本样本样本中共同学习了一种独特的特征代表,并成功合成了从中获取的高分辨率样本。为了增加具有歧视性的信息和独特性的所有主题,我们从一个深指纹验证器中提取的特征与SRGAN质量歧视性图像核对器的精度验证器,我们利用了高分辨率特征的精确度特征识别特征识别特征的特征识别特征的特征识别特征的特征的特征。我们还利用了高清晰度的重建方法,从而改进了我们提出的高清晰度的特征的特征,从而改进了对高清晰度识别的特征的特征的特征的特征的特征的特征的特征的特征的特征。