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FDeblur-GAN: Fingerprint Deblurring using Generative Adversarial Network

机译:FDEBLUR-GAN:使用生成对抗网络的指纹脱棕

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While working with fingerprint images acquired from crime scenes, mobile cameras, or low-quality sensors, it becomes difficult for automated identification systems to verify the identity due to image blur and distortion. We propose a fingerprint deblurring model FDeblur-GAN, based on the conditional Generative Adversarial Networks (cGANs) and multi-stage framework of the stack GAN. Additionally, we integrate two auxiliary sub-networks into the model for the deblurring task. The first sub-network is a ridge extractor model. It is added to generate ridge maps to ensure that fingerprint information and minutiae are preserved in the deblurring process and prevent the model from generating erroneous minutiae. The second sub-network is a verifier that helps the generator to preserve the ID information during the generation process. Using a database of blurred fingerprints and corresponding ridge maps, the deep network learns to deblur from the input blurry samples. We evaluate the proposed method in combination with two different fingerprint matching algorithms. We achieved an accuracy of 95.18% on our fingerprint database for the task of matching deblurred and ground truth fingerprints.
机译:在使用从犯罪场景中获取的指纹图像,移动摄像机或低质量传感器时,自动识别系统变得难以验证由于图像模糊和失真引起的身份。我们提出了一种指纹去纹理模型Fdeblur-GaN,基于条件生成的对抗性网络(CGANs)和堆栈GaN的多阶段框架。此外,我们将两个辅助子网集成到模型中,以获取去钻头任务。第一子网络是脊提取器模型。添加到生成脊地图以确保指纹信息和细节保存在去钻井过程中,并防止模型产生错误的细节。第二子网络是一种验证者,其可帮助发电机在生成过程期间保留ID信息。使用模糊指纹和相应的脊地图的数据库,深网络学会从输入模糊样品中去剥离。我们与两个不同的指纹匹配算法组合评估所提出的方法。我们在指纹数据库上实现了95.18%的准确性,以便与匹配的去掩盖和地面真相指纹进行任务。

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