Lossy image compression — A frequent sequence mining perspective employing efficient clustering

Avinash Kadimisetty, C. Oswald, B. Sivaselvan, K. Alekhya
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引用次数: 4

Abstract

This work explores the scope of Frequent Sequence Mining in the domain of Lossy Image Compression. The proposed work is based on the idea of clustering pixels and using the cluster identifiers in the compression. The DCT phase in JPEG is replaced with a combination of closed frequent sequence mining and k-means clustering to handle the redundant data effectively. This method focuses mainly on applying k-means clustering in parallel to all blocks of each component of the image to reduce the compression time. Conventional GSP algorithm is refined to optimize the cardinality of patterns through a novel pruning strategy, thus achieving a good reduction in the code table size. Simulations of the proposed algorithm indicate significant gains in compression ratio and quality in relation to the existing alternatives.
有损图像压缩-采用高效聚类的频繁序列挖掘视角
这项工作探讨了频繁序列挖掘在有损图像压缩领域的范围。提出的工作是基于聚类像素的思想,并在压缩中使用聚类标识符。用封闭频繁序列挖掘和k-means聚类相结合的方法代替JPEG中的DCT阶段,有效地处理冗余数据。该方法主要是对图像各分量的所有块并行应用k-means聚类,以减少压缩时间。对传统的GSP算法进行了改进,通过一种新颖的剪枝策略来优化模式的基数,从而实现了代码表大小的良好减小。该算法的仿真表明,相对于现有的替代算法,该算法在压缩比和质量方面有显著的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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