无损压缩的高分辨率视差地图图像

P. Astola, I. Tabus
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引用次数: 3

摘要

高分辨率视差图像存储在浮点原始文件中,其中每像素的位数通常为32位,尽管转换为定点表示时使用的位数较低,例如,在我们实验中使用的数据集中在24到26位之间。为了压缩具有如此高动态范围的图像,原始图像的位平面被组合成最多16位的整数图像,现有的压缩器可以很容易地压缩这些图像。我们首先介绍了一种上下文预测压缩器(CPC),它可以处理16位以上的整数图像。提出的整体压缩方案采用先对图像进行可逆线性变换作为第一次去相关处理,然后将变换后的图像分割成动态范围较小的整数图像,最后进行编码。我们对split-into-2和split-into-3方案进行了实验,并结合了几种现有的整数图像组件压缩器,结果表明,新引入的CPC在最低有效位平面上运行,CERV在最高有效位平面上运行,总能达到最佳压缩效果,最终的无损压缩结果在每像素8到12位之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lossless compression of high resolution disparity map images
High resolution disparity images are stored in floating point raw files, where the number of bits per pixel is typically 32, although the number of used bits when converted to a fixed point representation is lower, e.g., between 24 and 26 in the dataset used in our experiments. In order to compress images with such high dynamic range, the bitplanes of the original image are combined into integer images with at most 16 bits, for which readily existing compressors are available. We introduce first a context predictive compressor (CPC) which can operate on integer images having more than 16 bits. The proposed overall compression scheme uses a first revertible linear transformation of the image as a first decorrelation process, and then splits the transformed image into integer images with smaller dynamic range, which are finally encoded. We experiment with schemes of split-into-2 and split-into-3, with combinations of several existing compressors for the integer image components and show that the newly introduced CPC operating over the least significant bitplanes combined with CERV operating over the most significant bitplanes achieves always the best compression, with final lossless compressed results of between 8 and 12 bits per pixel.
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