Low-complexity lossless and fine-granularity scalable near-lossless compression of color images

R. van der Vleuten
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引用次数: 13

Abstract

Summary form only given. We present a method that extends lossless compression with the feature of fine-granularity scalable near lossless compression while preserving the high compression efficiency and low complexity exhibited by dedicated lossless compression methods when compared to the scalable compression methods developed for lossy image compression. The method operates by splitting the image pixel values into their most significant bits (MSB) and least significant bits (LSB). The MSB are losslessly compressed by a dedicated lossless compression method (e.g. JPEG-LS). The LSB are compressed by a scalable encoder, i.e. in such a way that their description may be truncated at any desired point. We also present a method to automatically and adaptively determine the MSB/LSB split point such that a scalable bit string is obtained without affecting the compression efficiency and without producing compression artefacts for near-lossless compression. To determine the split point, first a low complexity DPCM-type prediction is carried out on the original pixel values to obtain the prediction error signal. Next, the split point is computed from the average value of the magnitude of this signal. Finally, applying a (lossless) color transform to decorrelate the image color components before compressing them provides a higher (lossless) compression ratio.
彩色图像的低复杂度无损和细粒度可伸缩近无损压缩
只提供摘要形式。我们提出了一种扩展无损压缩的方法,该方法具有细粒度可伸缩的接近无损压缩的特征,同时保留了专用无损压缩方法所表现出的高压缩效率和低复杂性,与为有损图像压缩开发的可伸缩压缩方法相比。该方法将图像像素值分割为最高有效位(MSB)和最低有效位(LSB)。MSB通过专用的无损压缩方法(如JPEG-LS)进行无损压缩。LSB被一个可扩展的编码器压缩,即以这样一种方式,它们的描述可以在任何想要的点被截断。我们还提出了一种自动和自适应地确定MSB/LSB分裂点的方法,以便在不影响压缩效率和不产生压缩伪影的情况下获得可扩展的位串,从而实现近无损压缩。为了确定分割点,首先对原始像素值进行低复杂度dpcm型预测,得到预测误差信号。接下来,从该信号的幅度的平均值计算分裂点。最后,在压缩图像颜色分量之前,应用(无损)颜色变换去相关,可以提供更高的(无损)压缩比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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