基于匹配滤波器和稀疏自编码器的两级频谱增强的渐进式潜在指纹增强

K. Horapong, Kittinuth Srisutheenon, V. Areekul
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引用次数: 3

摘要

本文提出了一种渐进式增强算法来改善潜在指纹图像中的摩擦脊,这些摩擦脊通常是质量较差或部分缺失的。所提出的方法是为了在频域内将摩擦脊图从高质量区域传播到低质量区域而设计的。在第一阶段,算法从一个高脊信号强度的块开始,通过匹配滤波器初始增强脊谱。然后,增强的块被填充回输入图像,以便相邻块可以吸收更强的脊信号。我们在邻居处迭代地进行这个过程,以传播摩擦脊图案,直到完成整个图像。然而,在低脊信号强度下,匹配滤波器不能很好地增强脊信号。在第二阶段,我们使用基于稀疏自编码器的频谱发生器来近似匹配的滤波器进行频谱增强过程。将该方法与现有的两种潜在指纹增强方法进行了基准测试。实验结果表明,该方法在公开的IIT-D MOLF潜在指纹库上具有良好的准确率。
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Progressive Latent Fingerprint Enhancement Using Two-Stage Spectrum Boosting with Matched Filter and Sparse Autoencoder
We propose a progressive enhancement algorithm to improve friction ridges in latent fingerprint images that are usually of poor quality or partially missing. The proposed method is designed for performing in the frequency domain to propagate a friction ridge pattern from good to poor-quality areas. In the first stage, the algorithm starts with a block of high ridge signal strength to initially boost ridge spectra by a matched filter. The boosted block is then padded back to the input image, so that neighboring blocks can absorb the stronger ridge signal. We carry on this process iteratively at neighbors to propagate the friction ridge pattern until the entire image is done. However, at the low ridge signal strength, the matched filter cannot enhance the ridge signal well enough. In the second stage, we use a sparse autoencoder-based spectrum generator to approximate the matched filter for the spectrum boosting process. The proposed method was benchmarked with two existing latent fingerprint enhancement methods. The experimental result shows that the proposed method provided the promising accuracy on publicly available IIT-D MOLF latent fingerprint database.
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