基于加权自适应提升的小波变换

Yu Liu, K. Ngan
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引用次数: 14

摘要

针对自适应定向提升(ADL)方法存在的问题,提出了一种新的加权自适应提升(WAL)小波变换。该方法利用加权函数保证预测和更新阶段的一致性,利用定向插值提高插值图像的方向性,利用自适应插值滤波器根据图像的统计特性进行调整。实验结果表明,基于小波变换的图像编码比传统的提升小波变换的PSNR提高了3.02 dB,主观质量也有了明显改善。与ADL方法相比,PSNR提高了1.18 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weighted Adaptive Lifting-Basedwavelet Transform
In this paper, we propose a new weighted adaptive lifting (WAL)-based wavelet transform that is designed to solve the problems existing in the previous adaptive directional lifting (ADL) approach. The proposed approach uses the weighted function to make sure that the prediction and update stages are consistent, the directional interpolation to improve the orientation property of interpolated image, and adaptive interpolation filter to adjust to statistical property of each image. Experimental results show that the proposed WAL-based wavelet transform for image coding outperforms the conventional lifting-based wavelet transform up to 3.02 dB in PSNR and significant improvement in subjective quality is also observed. Compared with the ADL approach, up to 1.18 dB improvement in PSNR is reported.
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