Image compression using adaptive sparse representations over trained dictionaries

A. Akbari, M. Trocan, B. Granado
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引用次数: 10

Abstract

Sparse representation is a common approach for reducing the spatial redundancy by modelling an image as a linear combination of few atoms taken from an analytic or trained dictionary. This paper introduces a new image codec based on adaptive sparse representations wherein the visual salient information is considered into the rate allocation process. Firstly, the regions of the image that are more conspicuous to the human visual system are extracted using a classical graph-based method. Further, block-based sparse representation over a trained dictionary coupled with an adaptive sparse representation is proposed, such that the adaptivity is achieved by appropriately assigning more atoms of the dictionary to the blocks belonging to the salient regions. Experimental results show that the proposed method outperforms the existing image coding standards, such as JPEG and JPEG2000, which use an analytic dictionary, as well as the state-of-the-art codecs based on trained dictionaries.
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在训练字典上使用自适应稀疏表示的图像压缩
稀疏表示是一种减少空间冗余的常用方法,通过将图像建模为从分析或训练字典中获取的几个原子的线性组合。本文提出了一种基于自适应稀疏表示的图像编解码器,该算法将视觉显著性信息纳入到码率分配过程中。首先,使用经典的基于图的方法提取图像中对人类视觉系统更明显的区域;进一步,提出了基于块的稀疏表示与自适应稀疏表示相结合的训练字典,通过将字典中的更多原子适当地分配给属于显著区域的块来实现自适应性。实验结果表明,该方法优于JPEG和JPEG2000等使用解析字典的现有图像编码标准,以及基于训练字典的最新编解码器。
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