基于hho的云计算生物医学图像压缩矢量量化技术

T. S. Kumar, S. Jothilakshmi, B. C. James, M. Prakash, N. Arulkumar, C. Rekha
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引用次数: 2

摘要

在当前的数字时代,医学技术的开发和使用不同成像模式的大量医学数据的生成,生物医学图像的充分存储,管理和传输都需要图像压缩技术。矢量量化(VQ)是一种有效的图像压缩方法,目前广泛应用的矢量量化技术是Linde-Buzo-Gray (LBG),它可以生成局部最优的图像压缩码本。码本构造是一个利用元启发式优化技术解决的优化问题。鉴于此,本文利用基于Harris Hawks Optimization (HHO)的LBG技术,设计了一种在云计算(CC)环境下有效的生物医学图像压缩技术。HHO-LBG算法实现了勘探和开采之间的平滑过渡。为了研究HHO-LBG技术的更好性能,对基准生物医学图像进行了广泛的模拟。所提出的HHO-LBG技术在压缩性能和重建图像质量方面取得了令人满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HHO-Based Vector Quantization Technique for Biomedical Image Compression in Cloud Computing
In the present digital era, the exploitation of medical technologies and massive generation of medical data using different imaging modalities, adequate storage, management, and transmission of biomedical images necessitate image compression techniques. Vector quantization (VQ) is an effective image compression approach, and the widely employed VQ technique is Linde–Buzo–Gray (LBG), which generates local optimum codebooks for image compression. The codebook construction is treated as an optimization issue solved with utilization of metaheuristic optimization techniques. In this view, this paper designs an effective biomedical image compression technique in the cloud computing (CC) environment using Harris Hawks Optimization (HHO)-based LBG techniques. The HHO-LBG algorithm achieves a smooth transition among exploration as well as exploitation. To investigate the better performance of the HHO-LBG technique, an extensive set of simulations was carried out on benchmark biomedical images. The proposed HHO-LBG technique has accomplished promising results in terms of compression performance and reconstructed image quality.
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