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An evolutionary lion optimization algorithm-based image compression technique for biomedical applications

机译:基于进化狮子优化算法的生物医学应用图像压缩技术

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摘要

Recently, medical image compression becomes essential to effectively handle large amounts of medical data for storage and communication purposes. Vector quantization (VQ) is a popular image compression technique, and the commonly used VQ model is Linde-Buzo-Gray (LBG) that constructs a local optimal codebook to compress images. The codebook construction was considered as an optimization problem, and a bioinspired algorithm was employed to solve it. This article proposed a VQ codebook construction approach called the L2-LBG method utilizing the Lion optimization algorithm (LOA) and Lempel Ziv Markov chain Algorithm (LZMA). Once LOA constructed the codebook, LZMA was applied to compress the index table and further increase the compression performance of the LOA. A set of experimentation has been carried out using the benchmark medical images, and a comparative analysis was conducted with Cuckoo Search-based LBG (CS-LBG), Firefly-based LBG (FF-LBG) and JPEG2000. The compression efficiency of the presented model was validated in terms of compression ratio (CR), compression factor (CF), bit rate, and peak signal to noise ratio (PSNR). The proposed L2-LBG method obtained a higher CR of 0.3425375 and PSNR value of 52.62459 compared to CS-LBG, FA-LBG, and JPEG2000 methods. The experimental values revealed that the L2-LBG process yielded effective compression performance with a better-quality reconstructed image.
机译:最近,医学图像压缩变得重要,以有效处理大量医疗数据以进行存储和通信目的。矢量量化(VQ)是一种流行的图像压缩技术,常用的VQ模型是LINDE-BUZO-GRAY(LBG),用于构造一个用于压缩图像的本地最佳码本。码本构造被认为是优化问题,并采用生物定位算法来解决。本文提出了一种名为L2-LBG方法的VQ码本构造方法,利用狮子优化算法(LOA)和LEMPEL ZIV Markov链算法(LZMA)。一旦LOA构造了码本,将应用LZMA来压缩索引表并进一步提高LOA的压缩性能。已经使用基准医学图像进行了一组实验,并使用基于Cuckoo搜索的LBG(CS-LBG),萤火虫的LBG(FF-LBG)和JPEG2000进行了比较分析。根据压缩比(CR),压缩因子(CF),比特率和峰值信号(PSNR)验证所提出的模型的压缩效率。与CS-LBG,FA-LBG和JPEG2000方法相比,所提出的L2-LBG方法为0.3425375和PSNR值为52.62459。实验值表明,L2-LBG过程产生有效的压缩性能,具有更好的重建图像。

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