方向自适应分层分解图像编码

Tomokazu Murakami, Keita Takahashi, T. Naemura
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引用次数: 1

摘要

提出了一种利用逐像素方向估计将图像分层分解为方向自适应子带的新模型。对于每个分解操作,输入图像被分成两个部分:从输入图像中抽取的基础图像和子带分量。子带分量由估计跳过子采样的像素的残差组成,保证了分解的可逆性。采用方向自适应的方式进行估计,通过每个像素的L1范数准则确定其最优方向,以获得适合图像编码的良好能量压缩。此外,由于L1范数仅从基础图像中获得,我们不需要明确保留方向信息,这是我们模型的另一个优势。实验结果表明,在无损编码的情况下,该模型比传统Haar或D5/3离散小波变换获得更低的熵值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Direction-adaptive hierarchical decomposition for image coding
A new model of decomposing an image hierarchically into direction-adaptive subbands using pixel-wise direction estimation is presented. For each decomposing operation, an input image is divided into two parts: a base image subsampled from the input image and subband components. The subband components consist of residuals of estimating the pixels skipped through the subsampling, which ensures the invertibility of the decomposition. The estimation is performed in a direction-adaptive way, whose optimal direction is determined by a L1 norm criterion for each pixel, aiming to achieve good energy compaction that is suitable for image coding. Furthermore, since the L1 norms are obtained from the base image alone, we do not need to retain the directional information explicitly, which is another advantage of our model. Experimental results show that the proposed model can achieve lower entropy than conventional Haar or D5/3 discrete wavelet transform in case of lossless coding.
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