基于DenseUNet的潜在指纹增强

Peng Qian, Aojie Li, Manhua Liu
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引用次数: 15

摘要

潜在指纹的图像质量通常较差,脊状结构不清晰,重叠图案多种多样。增强是降低噪声、恢复损坏区域和提高脊结构清晰度以实现更准确指纹识别的重要处理步骤。现有的指纹增强方法对潜在指纹的增强效果不理想。本文提出了一种基于DenseUNet的潜在指纹增强方法。首先,将高质量指纹与结构化噪声叠加,生成训练数据;然后,通过像素对像素和端对端训练,构建深度DenseUNet,将低质量指纹图像转化为高质量指纹图像。最后,利用DenseUNet模型对整个潜在指纹进行迭代增强,达到图像质量要求。实验结果和在NIST SD27潜在指纹数据库上的对比表明了该算法的良好性能。
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Latent Fingerprint Enhancement Based on DenseUNet
The image quality of latent fingerprints is usually poor with unclear ridge structure and various overlapping patterns. Enhancement is an important processing step to reduce the noise, recover the corrupted regions and improve the clarity of ridge structure for more accurate fingerprint recognition. Existing fingerprint enhancement methods cannot achieve good performance for latent fingerprints. In this paper, we propose a latent fingerprint enhancement method based on DenseUNet. First, to generate the training data, the high-quality fingerprints are overlapped with the structured noises. Then, a deep DenseUNet is constructed to transform the low-quality fingerprint image into the high-quality fingerprint image by pixels-to-pixels and end- to-end training. Finally, the whole latent fingerprint is iteratively enhanced with the DenseUNet model to achieve the image quality requirement. Experiment results and comparison on NIST SD27 latent fingerprint database are presented to show the promising performance of the proposed algorithm.
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