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Research on Lossless Compression Algorithms of Low Resolution Palmprint Images

机译:低分辨率掌纹图像无损压缩算法研究

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In this study, lossless grayscale image compression methods are compared on public palmprint image databases. Effect of lossy compression algorithms on biometric samples has been well studied. However, lossless compression algorithms on the compression ratios have little been appreciated. In this study, we review and the stateofart lossless compression algorithms and investigate the performance using different when processing palmprint sample data. In particular, including those based on transformation (integer transform based in the JPEG , JPEG2000 and JPEG XR system, as well as the SPbased transform coding method), based on predictive lossless compression algorithms (LJPEG, CALIC and JPEGLS), dictionarybased compression methods (PNG UHA,7z and RAR). To gain a better and reliable result, these lossless compression algorithms are employed to test on different palmprint databases. Based on the testing results using an open palmprint image database, analysis and comparison, CALIC gives high compression ratios in a reasonable time, whereas JPEGLS is nearly as effective and very fast. The performance shows that a guide is given to choose which lossless palmprint image compression algorithm. At last, to find better solutions on how to improve lossless compression performance, we give some examples and suggestions.
机译:在这项研究中,在公共掌纹图像数据库上比较了无损灰度图像压缩方法。有损压缩算法对生物特征样本的影响已得到很好的研究。但是,关于压缩率的无损压缩算法却鲜为人知。在这项研究中,我们回顾了现有的无损压缩算法,并在处理掌纹样本数据时使用了不同的方法来研究性能。特别是,包括那些基于变换的(基于JPEG,JPEG2000和JPEG XR系统的整数变换以及基于SP的变换编码方法),基于预测性无损压缩算法(LJPEG,CALIC和JPEGLS),基于字典的压缩方法( PNG UHA,7z和RAR)。为了获得更好和可靠的结果,这些无损压缩算法用于在不同的掌纹数据库上进行测试。根据使用开放式掌纹图像数据库进行的测试结果,分析和比较,CALIC在合理的时间内给出了较高的压缩率,而JPEGLS几乎有效且非常快。性能表明,给出了选择哪种无损掌纹图像压缩算法的指南。最后,为了找到更好的解决方案以改善无损压缩性能,我们给出了一些示例和建议。

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