Edge-based transformation and entropy coding for lossless image compression

Md. Ahasan Kabir, M. Mondal
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引用次数: 12

Abstract

In the digital world, the size of images is an important challenge when dealing with the storage and transmission requirements. Compression is one of the fundamental techniques to address this problem. A number of transform based compression techniques are discussed in the literature and some are used in practice. In this paper, we propose an edge-based image transformation method which will be used with an entropy encoding technique to greatly reduce image size without loss in content. In the first stage of the proposed transform scheme, the intensity difference of neighboring pixels is calculated in the horizontal or vertical direction depending on the presence of a horizontal or vertical edge. In the second stage, the intensity differences are used to form two matrixes — one containing the absolute intensity difference and the other having the polarity of the differences. Next, Huffman or Arithmetic entropy coding is applied on the generated matrixes. The proposed edge-based transformation and entropy coding (ETEC) scheme is compared to the existing lossless compression techniques: Joint Photographic Experts Group Lossless (JPEG-LS) and Set Partitioning in Hierarchical Trees (SPIHT). Simulation results show that the proposed ETEC scheme can provide better compression compared to JPEG-LS and SPIHT algorithms for pixelated images that are used for data communication between a computer screen and a camera.
基于边缘变换和熵编码的无损图像压缩
在数字世界中,在处理存储和传输要求时,图像的大小是一个重要的挑战。压缩是解决这个问题的基本技术之一。文献中讨论了许多基于变换的压缩技术,其中一些在实践中得到了应用。在本文中,我们提出了一种基于边缘的图像变换方法,该方法将与熵编码技术相结合,在不损失图像内容的情况下大大减小图像尺寸。在所提出的变换方案的第一阶段,根据水平或垂直边缘的存在,在水平或垂直方向上计算相邻像素的强度差。在第二阶段,利用强度差形成两个矩阵,一个包含绝对强度差,另一个具有差异的极性。然后,对生成的矩阵应用霍夫曼或算术熵编码。将提出的基于边缘的变换和熵编码(ETEC)方案与现有的无损压缩技术:联合图像专家组无损压缩(JPEG-LS)和分层树集分割(SPIHT)进行了比较。仿真结果表明,对于用于计算机屏幕和摄像机之间数据通信的像素化图像,与JPEG-LS和SPIHT算法相比,提出的ETEC方案可以提供更好的压缩效果。
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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