Image compression by orthogonal decomposition and dynamic segmentation using cellular nonlinear network chips

Tamás Szirányi, L. Czúni, I. Kopilovic, T. Gyimesi
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引用次数: 1

Abstract

A method is shown using the CNN chip-set hardware architecture for the implementation of a high-speed, low bit-rate image coding system. A simple and fast algorithm is introduced to generate basis functions of 2 dimensional (2D) orthogonal transformations. Using the 2D basis functions of the Hadamard or Cosine functions, the transformation coefficients of the basic block of the image are measured by the CNN. Meanwhile, the CNN can produce the inverse transformation of the measured coefficients and the actual distortion-rate can be computed. If a required distortion-rate is reached, the coding process could be stopped (the use of even more coefficients would increase bit-rate needlessly). Effects of noise and VLSI computing accuracy are also considered to optimise the architecture. We also give a short description of how to join the transform coding method and the object-oriented image model.
基于元胞非线性网络芯片的正交分解和动态分割图像压缩
采用CNN芯片组硬件架构实现高速、低比特率的图像编码系统。介绍了一种简单、快速的二维正交变换基函数生成算法。利用Hadamard函数或cos函数的二维基函数,通过CNN测量图像基本块的变换系数。同时,CNN可以对测量系数进行逆变换,从而计算出实际的失真率。如果达到所需的失真率,则可以停止编码过程(使用更多系数会不必要地增加比特率)。为了优化结构,还考虑了噪声和VLSI计算精度的影响。我们还简要描述了如何将转换编码方法与面向对象的图像模型结合起来。
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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