针对低质量指纹图像的指纹增强算法比较

Kevin Arighi Yusharyahya, A. Nugroho, James Purnama, Maulahikmah Galsinium
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引用次数: 3

摘要

图像增强是大多数指纹特征提取算法中常见的步骤。不幸的是,许多指纹的质量很差,这使得提取可靠的细节变得困难。造成这种情况的原因有很多。图像上可能会有太多的噪音或鬼影,或者由于人的工作而造成的手指本身的损伤(如疤痕或折痕),例如在工作中处理大量文件的秘书,或者以体力劳动为职业的人。本研究试图通过比较三种不同的算法来评估图像增强的有效性,包括在频域使用功率变换、在空间域使用平滑和使用Gabor滤波器进行上下文滤波。实验结果表明,对质量较差的指纹图像进行增强后,特别是对图像进行频域处理后,效果明显。上下文过滤在基于局部上下文的数据增强图像方面也有很好的效果,但为了使其更有效,能够构建更好的增强指纹图像结果,它还应该伴随着全局上下文的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison of fingerprint enhancement algorithms for poor quality fingerprint images
Image enhancement is a common step in most fingerprint feature extraction algorithms. Unfortunately, many fingerprints are poor in quality, which makes extracting reliable minutiae difficult. There are many factors why this may be the case. There might be too much noise or ghosting on the image, or damages (such as scars or creases) on the fingers itself caused by the person's line of work, such as secretaries who deal with a lot of paper in their job, or people who perform manual labor as their occupation. This research attempts to evaluate the effectiveness of image enhancement by comparing three different algorithms, including the use of power transformation in the frequency domain, smoothing on the spatial domain and contextual filtering using Gabor Filters. The experimental results definitely showed improvements after enhancing poor quality fingerprint images, especially when the image is processed in the frequency domain. Contextual filtering also works well in enhancing images based on data in the local context, but in order for it to be more effective and be able to construct better enhanced fingerprint image results, it should also be accompanied with data in the global context.
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