Institute of Artificial Intelligence and Robotics, Xi'an Jiaotong University, Xi'an 710049, China.
IEEE Trans Image Process. 2013 Sep;22(9):3690-702. doi: 10.1109/TIP.2013.2268977. Epub 2013 Jun 17.
Fractal image compression (FIC) is an image coding technology based on the local similarity of image structure. It is widely used in many fields such as image retrieval, image denoising, image authentication, and encryption. FIC, however, suffers from the high computational complexity in encoding. Although many schemes are published to speed up encoding, they do not easily satisfy the encoding time or the reconstructed image quality requirements. In this paper, a new FIC scheme is proposed based on the fact that the affine similarity between two blocks in FIC is equivalent to the absolute value of Pearson's correlation coefficient (APCC) between them. First, all blocks in the range and domain pools are chosen and classified using an APCC-based block classification method to increase the matching probability. Second, by sorting the domain blocks with respect to APCCs between these domain blocks and a preset block in each class, the matching domain block for a range block can be searched in the selected domain set in which these APCCs are closer to APCC between the range block and the preset block. Experimental results show that the proposed scheme can significantly speed up the encoding process in FIC while preserving the reconstructed image quality well.
分形图像压缩 (FIC) 是一种基于图像结构局部相似性的图像编码技术。它广泛应用于图像检索、图像去噪、图像认证和加密等领域。然而,FIC 编码过程计算复杂度高。尽管已经发布了许多加速编码的方案,但它们不容易满足编码时间或重构图像质量的要求。本文提出了一种新的 FIC 方案,该方案基于以下事实:FIC 中两个块之间的仿射相似性等同于它们之间的 Pearson 相关系数 (APCC) 的绝对值。首先,使用基于 APCC 的块分类方法选择和分类范围和域池中所有的块,以提高匹配概率。其次,通过根据这些域块与每个类中预设块之间的 APCC 对域块进行排序,可以在所选择的域集中搜索与范围块匹配的域块,这些 APCC 更接近范围块和预设块之间的 APCC。实验结果表明,所提出的方案可以在保持重构图像质量的同时,显著加快 FIC 的编码过程。