Phelan N C, Ennis J T
Institute of Radiological Sciences, University College Dublin, Mater Hospital, Ireland.
Med Phys. 1999 Aug;26(8):1607-11. doi: 10.1118/1.598655.
Image compression is fundamental to the efficient and cost-effective use of digital medical imaging technology and applications. Wavelet transform techniques currently provide the most promising approach to high-quality image compression which is essential for diagnostic medical applications. A novel approach to image compression based on the wavelet decomposition has been developed which utilizes the shape or morphology of wavelet transform coefficients in the wavelet domain to isolate and retain significant coefficients corresponding to image structure and features. The remaining coefficients are further compressed using a combination of run-length and Huffman coding. The technique has been implemented and applied to full 16 bit medical image data for a range of compression ratios. Objective peak signal-to-noise ratio performance of the compression technique was analyzed. Results indicate that good reconstructed image quality can be achieved at compression ratios of up to 15:1 for the image types studied. This technique represents an effective approach to the compression of diagnostic medical images and is worthy of further, more thorough, evaluation of diagnostic quality and accuracy in a clinical setting.
图像压缩对于数字医学成像技术和应用的高效及经济有效使用至关重要。小波变换技术目前为高质量图像压缩提供了最具前景的方法,这对于诊断医学应用必不可少。已开发出一种基于小波分解的新型图像压缩方法,该方法利用小波域中小波变换系数的形状或形态来分离并保留与图像结构和特征相对应的重要系数。其余系数使用行程编码和哈夫曼编码相结合的方式进一步压缩。该技术已得到实现,并应用于一系列压缩比的完整16位医学图像数据。分析了压缩技术的客观峰值信噪比性能。结果表明,对于所研究的图像类型,在高达15:1的压缩比下可实现良好的重建图像质量。该技术代表了一种有效的诊断医学图像压缩方法,值得在临床环境中对诊断质量和准确性进行进一步、更全面的评估。