Div. of Comput. Sci., Nat. Tech. Univ. of Athens.
IEEE Trans Image Process. 1995;4(8):1160-5. doi: 10.1109/83.403423.
In this correspondence, we propose design techniques for analysis and synthesis filters of 2-D perfect reconstruction filter banks (PRFB's) that perform optimal reconstruction when a reduced number of subband signals is used. Based on the minimization of the squared error between the original signal and some low-resolution representation of it, the 2-D filters are optimally adjusted to the statistics of the input images so that most of the signal's energy is concentrated in the first few subband components. This property makes the optimal PRFB's efficient for image compression and pattern representations at lower resolutions for classification purposes. By extending recently introduced ideas from frequency domain principal component analysis to two dimensions, we present results for general 2-D discrete nonstationary and stationary second-order processes, showing that the optimal filters are nonseparable. Particular attention is paid to separable random fields, proving that only the first and last filters of the optimal PRFB are separable in this case. Simulation results that illustrate the theoretical achievements are presented.
在这封通信中,我们提出了用于分析和综合二维完美重构滤波器组(PRFB)的设计技术,当使用较少的子带信号时,这些滤波器组可以实现最佳重构。基于原始信号与其低分辨率表示之间的平方误差最小化,二维滤波器被最佳地调整到输入图像的统计特性,以便信号的大部分能量集中在前几个子带分量中。该特性使得最优 PRFB 能够在较低分辨率下有效地进行图像压缩和模式表示,以便进行分类。通过将最近从频域主成分分析中引入的思想扩展到二维,我们给出了一般二维离散非平稳和平稳二阶过程的结果,表明最优滤波器是非可分离的。特别关注可分离随机场,证明在这种情况下,最优 PRFB 的仅第一个和最后一个滤波器是可分离的。给出了说明理论成果的仿真结果。