基于混合图像模型的指纹图像压缩

M. Gökmen, I. Ersoy, Anil K. Jain
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引用次数: 7

摘要

提出了一种基于混合图像模型的高效指纹图像压缩方案。我们的模型是基于提取山脊和山谷轮廓,然后利用这些轮廓上的灰度值重建混合表面。我们使用的混合模型是用于正则化表面重建的膜和板函数的凸组合。在数据稀疏的情况下,确定了该模型的两个参数,以获得与原始指纹图像很好的近似。在该压缩方案中,脊线轮廓采用差分链编码进行高效编码,而沿链的连续灰度值之间的差异采用霍夫曼编码进行编码。压缩图像中还包括每个谷段的平均值和混合模型的两个参数。与基于变换的算法和基于小波的算法相比,我们的方法的一个优点是,即使在压缩比非常高的情况下,也可以直接从压缩图像中提取特征,如delta点和核心点、端点、分叉点。该算法已应用于各种指纹图像,在保留图像所有重要特征的情况下,获得了45:1的高压缩比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression of fingerprint images using hybrid image model
We present an efficient model-based fingerprint image compression scheme based on a hybrid image model. Our model is based on extracting ridge and valley contours and then reconstructing a hybrid surface by using the gray values on these contours. The hybrid model we utilized is the convex combination of the membrane and plate functionals used for surface reconstruction by regularization. Two parameters of this model is determined to obtain a good approximation of the original fingerprint image given the sparse data, on ridges and valleys. In this compression scheme, the ridge contours are coded efficiently by using a differential chain code, while the differences between consecutive gray values along the chains are encoded using Huffman coding. Also included in the compressed image are the mean value of each valley segment and two parameters of the hybrid model. One advantage of our approach as compared to transform based algorithms and wavelet-based algorithms is that features such as delta and core points, end points, bifurcation points can be extracted directly from compressed image even for very high values of the compression ratio. The algorithm has been applied to various fingerprint images, and high compression ratios like 45:1 have been obtained while keeping all the important features in the images.
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