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首页> 外文期刊>Journal of computer sciences >MEDICAL IMAGE COMPRESSION TECHNIQUE USING LISTLESS SET PARTITIONING IN HIERARCHICAL TREES AND CONTEXTUAL VECTOR QUANTIZATION FOR BRAIN IMAGES
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MEDICAL IMAGE COMPRESSION TECHNIQUE USING LISTLESS SET PARTITIONING IN HIERARCHICAL TREES AND CONTEXTUAL VECTOR QUANTIZATION FOR BRAIN IMAGES

机译:分层树中无集划分和脑图像上下文向量量化的医学图像压缩技术

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摘要

A hybrid image compression techniques has been developed to compress medical images. Due to the extensive use of medical images like CT and MR scan, these medical imagery are stored for a longer period for the continuous monitoring of the patients and the amount of data associated with images is large and it occupies enormous storage capacity. So, the medical images need to be compressed to reduce the storage cost and for transmission without any loss. In this study, a hybrid method which combines the Listless Set Partitioning in Hierarchical Trees (LSPIHT) and the Contextual Vector Quantization (CVQ) method for the compression of brain images. Here, the region containing the most important information for diagnosis is called Region of Interest (ROI) and this is to be compressed with out any loss in the quality. In this method, the ROI is encoded separately using LSPIHT and the Back Ground region (BG) is encoded using CVQ. Finally, the two regions are merged together to get the reconstructed image. Our results show that the proposed method gives very good image quality for diagnosis without any degradable loss. The performance of the compression technique is evaluated using the parameters (CR, MSE, PSNR) and achieved better result compared to other existing methods. As a result, we strongly believe that using our method, we can overcome the limitations in storage and transmission of medical images that are produced day by day.
机译:已经开发出混合图像压缩技术来压缩医学图像。由于诸如CT和MR扫描之类的医学图像的广泛使用,这些医学图像被存储了更长的时间以连续监控患者,并且与图像相关的数据量很大,并且占据了巨大的存储容量。因此,需要压缩医学图像以降低存储成本并进行传输而不会造成任何损失。在这项研究中,一种混合​​方法结合了树的无精打采集划分(LSPIHT)和上下文向量量化(CVQ)方法来压缩大脑图像。在这里,包含最重要的诊断信息的区域称为“关注区域(ROI)”,将对其进行压缩而不会造成质量损失。在此方法中,使用LSPIHT分别对ROI进行编码,并使用CVQ对背景区域(BG)进行编码。最后,将两个区域合并在一起以获得重建图像。我们的结果表明,所提出的方法可提供非常好的图像质量进行诊断,而不会造成任何可降解的损失。与其他现有方法相比,使用参数(CR,MSE,PSNR)评估了压缩技术的性能,并获得了更好的结果。因此,我们坚信,使用我们的方法,我们可以克服每天产生的医学图像在存储和传输方面的局限性。

著录项

  • 来源
    《Journal of computer sciences》 |2013年第9期|1181-1189|共9页
  • 作者

    Sridevi S.; V.R. Vijayakumar;

  • 作者单位

    Department of Computer Science and Engineering, Sethu Insitute of Technology, Kariapatti, Tamil Nadu, India;

    Department of Electronics and Communication Engineering, Anna University, Coimbatore, Tamil Nadu, India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Lspiht; CVQ; ROI; BG; MSE; CR; PSNR;

    机译:Lspiht;CVQ;投资回报率;BG;MSE;CR;信噪比;

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