有损图像集压缩的位分配

Howard Cheng, Camara Lerner
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引用次数: 7

摘要

在许多应用中会产生大量相似的图像。为了更有效地存储这些图像,需要利用相似图像之间的冗余。在有损图像集压缩中,已经提出了许多方法来减少这种图像间冗余。这些方法要么使用传统的图像压缩算法对每个图像进行编码,要么从已经编码的类似图像中预测图像并对预测残差进行编码。尽管这些方法在确定图像集中的预测结构的方式上有所不同,但它们都没有考虑比特分配对重建图像整体质量的影响。在本文中,我们证明了拉格朗日优化可以用于确定每个编码图像的位分配,以提高重建图像集的整体质量。此外,采用近似残差图像的率失真曲线模型可以显著减少编码时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bit allocation for lossy image set compression
Large sets of similar images are produced in many applications. To store these images more efficiently, redundancy among similar images need to be exploited. A number of methods have been proposed to reduce such inter-image redundancy in lossy image set compression. These methods encode each image either using a conventional image compression algorithm, or predicts the image from a similar image already encoded and encode the prediction residual. Although these methods differ in the way they determine the prediction structure in the image set, they do not consider the effect of bit allocation on the overall quality of the reconstructed images. In this paper, we show that Lagrangian optimization can be used to determine bit allocation for each encoded image in order to improve the overall quality of the reconstructed image set. Furthermore, a model approximating rate-distortion curves of the residual images can be used to reduce the encoding time significantly.
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