基于DWT的卫生系统图像压缩

Ibrahim Abdulai Sawaneh
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引用次数: 0

摘要

当涉及到处理大量患者记录时,有人呼吁加强现有的医疗保健部门。巨大的文件包含大量的副本。因此,理想的压缩开始发挥作用。图像数据压缩消除了冗余副本(多个不必要的副本),从而增加了存储空间和传输带宽。图像数据压缩是至关重要的,因为它有助于减少图像文件大小,并通过多种小波分析方法加快文件在互联网上的传输速率,而不会丢失传输的医学图像数据。因此,本报告提出了一种基于离散小波变换(DWT)、傅立叶变换(FT)和快速傅立叶变换的医疗系统数据压缩实现方案,该方案具有压缩和恢复医学图像数据而不丢失数据的能力。人体心脏和大脑等医疗保健图像需要快速传输,以获得可靠高效的结果。采用重建质量最佳的小波变换大大提高了压缩效果。通过有效的数据压缩技术,可以实现健康监测大数据通信技术的赋能性创新。实验结果表明,采用Haar小波对MSE和PSNR进行参数化检测可以达到我们的目的。为了进一步确定小波变换方法的有效性,还采用了图像压缩、图像去噪等多种成像技术。该算法对医学图像的压缩效果良好。在健康监测系统中,必须采用压缩程序来缩小存储空间、降低传输速率和限制大量能源使用,从而减小数据集的大小。这项工作的动机是实现压缩方法来修改传统的医疗保健平台,以减小文件大小,降低操作成本。图像压缩的目的是用比非零系数关系所需的估计更少的估计来重建图像。从理性上讲,较少的精心选择的解释足以使新样本与源图像完全相同。我们使用DWT来实现我们的压缩方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DWT Based Image Compression for Health Systems
There are calls for enhancing present healthcare sectors when it comes to handling huge data size of patients’ records. The huge files contain lots of duplicate copies. Therefore, the ideal of compression comes into play. Image data compression removes redundant copies (multiple unnecessary copies) that increase the storage space and transmission bandwidth. Image data compression is pivotal as it helps reduce image file size and speeds up file transmission rate over the internet through multiple wavelet analytics methods without loss in the transmitted medical image data. Therefore this report presents data compression implementation for healthcare systems using a proposed scheme of discrete wavelet transform (DWT), Fourier transform (FT) and Fast Fourier transform with capacity of compressing and recovering medical image data without data loss. Healthcare images such as those of human heart and brain need fast transmission for reliable and efficient result. Using DWT which has optimal reconstruction quality greatly improves compression. A representation of enabling innovations in communication technologies with big data for health monitoring is achievable through effective data compression techniques. Our experimental implementation shows that using Haar wavelet with parametric determination of MSE and PSNR solve our aims. Many imaging techniques were also deployed to further ascertain DWT method’s efficiency such as image compression and image de-noising. The proposed compression of medical image was excellent. It is essential to reduce the size of data sets by employing compression procedures to shrink storage space, reduce transmission rate, and limit massive energy usage in health monitoring systems. The motivation for this work was to implement compression method to modify traditional healthcare platform to lower file size, and reduce cost of operation. Image compression aims at reconstructing images from extensively lesser estimations than were already thought necessary in relations with non-zero coefficients. Rationally, fewer well-chosen interpretations is adequate to reproduce the new sample exactly as the source image. We look at DWT to implement our compression method.
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