Medical Image Compression Using DCT based MRG Algorithem

P. Sreenivasulu, S. Varadharajan
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Abstract

Nowadays, there is an increase in the volume of data produced and stored in the medical field. Therefore for the efficient handling of these large data there needs the compression technique to re-explore by considering the algorithm's complexity. In this research work, a narrative medical image compression approach is implanted by means of intelligent techniques and is composed of three main stages like Segmentation, Image compression, and Image decompression. From the start, the division procedure is started by parting the picture's Region of Interest (ROI) and Non-ROI areas by Modified Region Growing (MRG) calculation. Further, for ROI regions, Discrete Cosine Transform (DCT) model and SPHIT encoding method are deployed for compression, whereas the Non-ROI region uses the Discrete Wavelet Transform (DWT) and Merge-based Huffman encoding (MHE) methods for doing compression process. Mainly, this research work employs the optimization concept for the optimal selection of filter coefficients from DWT and DCT approaches. For this purpose, a new Improvised Steering angle and Gear-based ROA (ISG-ROA) is proposed, which is the modification of Rider Optimization Algorithm (ROA). To the last, decompression process is handled by reversing the compression process using the same optimized coefficients. The filter coefficient is adapted to finalize the result with reduced compression Ratio (CR).
基于DCT的MRG算法的医学图像压缩
如今,医疗领域产生和存储的数据量在不断增加。因此,为了有效地处理这些大数据,考虑到算法的复杂性,需要对压缩技术进行重新探索。本研究采用智能技术植入叙事医学图像压缩方法,主要分为图像分割、图像压缩和图像解压缩三个阶段。首先,分割过程是通过修正区域增长(MRG)计算将图像的感兴趣区域(ROI)和非感兴趣区域分开。此外,对于感兴趣区域,采用离散余弦变换(DCT)模型和SPHIT编码方法进行压缩,而非感兴趣区域采用离散小波变换(DWT)和基于合并的霍夫曼编码(MHE)方法进行压缩处理。本研究主要采用了DWT和DCT方法中滤波器系数的最优选择的优化概念。为此,提出了一种新的基于舵手优化算法(ROA),即基于舵手角度和齿轮的临时优化算法。最后,解压过程是通过使用相同的优化系数反转压缩过程来处理的。通过调整滤波系数,最终得到压缩比降低的结果。
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