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A novel hybrid method of haar-wavelet and residual vector quantization for compressing medical images

机译:Haar小波与残差矢量量化混合的医学图像压缩新方法

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This paper presents a novel image compression method for compressing medical images combining Haar-Wavelet Transform (HWT) and Residual Vector Quantization (RVQ) technique for enhancing the image quality and compression ratio. This method is used to represent an image in a compact form for reduced storage and efficient transmission. Nowadays, technology needs massive data transmission with low transmission cost. Image compression satisfies these requirements with reduced size of an image data by eliminating redundant information. Especially, medical field needs to store and access enormous image data for diagnosis. In this scenario, compression plays a vital part to store and transmit the data efficiently. The proposed method achieves high compression ratio without compromising the quality of reconstructed image.
机译:本文提出了一种结合Haar-Wavelet变换(HWT)和残差矢量量化(RVQ)技术压缩医学图像的新颖图像压缩方法,以提高图像质量和压缩率。此方法用于以紧凑形式表示图像,以减少存储量并提高传输效率。如今,技术需要以低传输成本传输大量数据。图像压缩通过消除冗余信息,以减小的图像数据大小满足了这些要求。特别地,医学领域需要存储和访问大量图像数据以进行诊断。在这种情况下,压缩对于有效存储和传输数据起着至关重要的作用。所提出的方法在不损害重建图像质量的情况下实现了高压缩比。

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