Denoising of fingerprint images by exploring external and internal correlations

K S Krishnapriya
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引用次数: 3

Abstract

Fingerprint is an important measure used to detect an unknown victim, suspect or witness. It has a major role in verifying records to explore links and matches between a suspect and a crime. Fingerprints are also used for security reasons, such as an entrance control at important buildings. But the quality of fingerprint images can easily get degraded by skin dryness, wet, wound and other types of noises. Hence denoising of fingerprint images is a necessary step in systems for automatic fingerprint recognition. This paper suggests a 3-stage process for the removal of noise from fingerprint images, through exploring external correlations and internal correlations, with the help of a set of correlated images. Internal and external data cubes are built for each noisy patch by discovering identical patches from the corresponding noisy and internet based images. External denoising in the first stage is done by a graph based optimization method and internal denoising is done by means of a frequency truncation process. Internal denoising results and external denoising results are combined to obtain the preliminary denoising result. The second stage performs filtering of external and internal cubes and the fused result is in turn passed to the third stage. In the third stage, an image enhancement technique is carried out to obtain the final denoised result. This method is compared with the existing algorithms and the experimental results, in terms of its PSNR (Peak Signal to Noise Ratio) values and SSIM (Structural Similarity Measure) values proved that the method is efficient than all of them.
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通过探索外部和内部的相关性去噪指纹图像
指纹是识别未知被害人、嫌疑人或证人的重要手段。它在核实记录以探索嫌疑人与犯罪之间的联系和匹配方面发挥着重要作用。指纹也用于安全方面,比如重要建筑的入口控制。但指纹图像的质量很容易因皮肤干燥、潮湿、伤口和其他类型的噪音而降低。因此,指纹图像去噪是指纹自动识别系统的必要步骤。本文提出了一种利用一组相关图像,通过探索指纹图像的外部相关性和内部相关性,分三步去除指纹图像噪声的方法。通过从相应的噪声和基于互联网的图像中发现相同的补丁,为每个噪声补丁构建内部和外部数据立方体。第一阶段的外部去噪采用基于图的优化方法,内部去噪采用频率截断处理。将内部去噪结果与外部去噪结果相结合,得到初步去噪结果。第二阶段执行外部和内部多维数据集的过滤,然后将融合的结果传递给第三阶段。第三阶段,对图像进行增强处理,得到最终去噪结果。将该方法与现有算法和实验结果进行比较,从其峰值信噪比(PSNR)值和结构相似度度量(SSIM)值两方面证明了该方法的有效性。
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