具有有效开销率选择的图像子带自适应量化

Y. Yoo, Antonio Ortega, Bin Yu
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引用次数: 17

摘要

子带图像编码技术的成功很大程度上归功于自适应量化和自适应熵编码的有效利用。通常情况下,自适应量化是通过定义一组离散量化器来实现的,其中一个量化器是为给定的一组系数选择的。因此,这种类型的前向自适应需要将开销信息(量化器的选择)发送到解码器。然后,使用自适应熵编码传输量化系数,通常是通过反向自适应算术编码。我们表明,可以使用向前和向后自适应方法的组合来更新量化器,从而减少开销要求,同时仍然提供良好的性能。具体来说,我们提出了一种算法,其中每个系数根据过去的量化数据被分类为几个类,并且每个类使用的量化器可以动态调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive quantization of image subbands with efficient overhead rate selection
Subband image coding techniques owe much of their success to an effective use of adaptive quantization and adaptive entropy coding. It is often the case that adaptive quantization is achieved by defining a discrete set of quantizers from which one is chosen for a given set of coefficients. This type of forward adaptation thus requires that overhead information (the choice of quantizer) be sent to the decoder. Then, the quantized coefficients are transmitted using adaptive entropy coding, typically through backward adaptive arithmetic coding. We show that a combination of forward and backward adaptation methods can be used to update the quantizers thus reducing the overhead requirements while still providing good performance. Specifically, we present an algorithm where each coefficient is classified into several classes based on the past quantized data and where the quantizer to be used for each class can itself be adapted on the fly.
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