Starosolski Roman
Department of Algorithmics and Software, Silesian University of Technology, 44-100 Gliwice, Poland.
Entropy (Basel). 2020 Jul 9;22(7):751. doi: 10.3390/e22070751.
A new hybrid transform for lossless image compression exploiting a discrete wavelet transform (DWT) and prediction is the main new contribution of this paper. Simple prediction is generally considered ineffective in conjunction with DWT but we applied it to subbands of DWT modified using reversible denoising and lifting steps (RDLSs) with step skipping. The new transform was constructed in an image-adaptive way using heuristics and entropy estimation. For a large and diverse test set consisting of 499 photographic and 247 non-photographic (screen content) images, we found that RDLS with step skipping allowed effectively combining DWT with prediction. Using prediction, we nearly doubled the JPEG 2000 compression ratio improvements that could be obtained using RDLS with step skipping. Because for some images it might be better to apply prediction instead of DWT, we proposed compression schemes with various tradeoffs, which are practical contributions of this study. Compared with unmodified JPEG 2000, one scheme improved the compression ratios of photographic and non-photographic images, on average, by 1.2% and 30.9%, respectively, at the cost of increasing the compression time by 2% and introducing only minimal modifications to JPEG 2000. Greater ratio improvements, exceeding 2% and 32%, respectively, are attainable at a greater cost.
一种利用离散小波变换(DWT)和预测的新型无损图像压缩混合变换是本文的主要新贡献。简单预测通常被认为与DWT结合时效果不佳,但我们将其应用于使用带步长跳过的可逆去噪和提升步骤(RDLS)修改后的DWT子带。新变换以图像自适应的方式利用启发式方法和熵估计构建。对于由499张照片图像和247张非照片(屏幕内容)图像组成的大型多样测试集,我们发现带步长跳过的RDLS能够有效地将DWT与预测相结合。通过使用预测,我们将使用带步长跳过的RDLS可获得的JPEG 2000压缩率提升几乎提高了一倍。由于对于某些图像,应用预测可能比应用DWT更好,我们提出了具有各种权衡的压缩方案,这是本研究的实际贡献。与未修改的JPEG 2000相比,一种方案分别将照片图像和非照片图像的压缩率平均提高了1.2%和30.9%,代价是压缩时间增加2%,并且仅对JPEG 2000进行了最小程度的修改。以更高的代价可实现分别超过2%和32%的更大压缩率提升。