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Improved Techniques for Mammographic Image Compression using Balanced Multiwavelet Block Tree Coding

机译:平衡多小波块树编码技术对乳腺X线图像压缩的改进技术

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The recent innovation in digital medical imaging techniques requires the development of high-performance storage and image transmission systems. The biggest problem in digital technology is voluminous amount of data generated. For example, a digital mammographic image of size 1024×1024 pixels with 8 bits per pixel requires 8.3 Mb for storing it in original form. Researchers in several studies have demonstrated the need for high rate compression algorithms for medical imaging applications. But the recently reported image compression results indicate that Peak Signal-to-Noise Ratio (PSNR) is outperformed by scalar wavelets. However, it often fails to capture high-frequency information accurately. Interestingly, multiwavelet preserves high-frequency information in mammographic image and provides good energy compaction. The challenge still remains as to how one can better represent the signal for achieving the best compression. This paper proposes a solution to the above open problems using balanced multiwavelet-based image compression. The proposed scheme presents combination of two novel ideas: A coefficient reorganization suitable to balanced multiwavelet decomposition is used to regain the parent-child relationship. A block tree coding is used for compression and reconstruction of multiwavelet transformed image and thus the proposed scheme is called as Multiwavelet Block Tree Coding (MBTC). This approach yields the advantages of high energy compaction, PSNR, and a less number of bits for encoding. Balanced multiwavelet-based compression, with MBTC applied to a set of four mammographic images, achieves an average PSNR of 43.245 dB against the existing Set Partitioning In Hierarchical Trees (SPIHT) algorithm which on an average achieves only 34.181 dB for 0.5 bpp bit rate and MBTC requires encoding bits of 45.565% less than SPIHT encoding.
机译:数字医学成像技术的最新创新要求开发高性能存储和图像传输系统。数字技术中最大的问题是生成大量数据。例如,大小为1024×1024像素(每像素8位)的数字乳房X线照片需要8.3 Mb的原始格式存储。多项研究的研究人员表明,对于医学成像应用,需要高速率压缩算法。但是,最近报道的图像压缩结果表明,峰值信噪比(PSNR)优于标量小波。但是,它常常无法准确地捕获高频信息。有趣的是,多小波在乳房X线照片中保留了高频信息,并提供了良好的能量压缩。对于如何更好地表示信号以实现最佳压缩,仍然存在挑战。本文提出了一种基于平衡多小波的图像压缩方法来解决上述开放问题。所提出的方案提出了两种新颖思想的组合:适用于平衡多小波分解的系数重组被用于重新获得亲子关系。块树编码用于多小波变换图像的压缩和重建,因此,该方案被称为多小波块树编码(MBTC)。这种方法具有高能量压缩,PSNR和较少的编码位数的优点。基于平衡多小波的压缩,将MBTC应用于一组四个乳房X线图像,与现有的“分层树集划分”(SPIHT)算法相比,平均PSNR为43.245 dB,对于0.5 bpp的比特率,平均平均只有34.181 dB,并且MBTC要求的编码位比SPIHT编码少45.565%。

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