CVOPTICSMay 26, 2017

Two-dimensional nonseparable discrete linear canonical transform based on CM-CC-CM-CC decomposition

arXiv:1707.03688v116 citations
Originality Incremental advance
AI Analysis

This work addresses a domain-specific issue in optics and signal processing by providing an incremental improvement to reduce errors and complexity in transform implementations.

The paper tackled the problem of high digital implementation complexity and interpolation errors in the 2D nonseparable linear canonical transform by proposing a CM-CC-CM-CC decomposition, resulting in higher accuracy, lower computational complexity, and perfect reversibility compared to previous methods.

As a generalization of the two-dimensional Fourier transform (2D FT) and 2D fractional Fourier transform, the 2D nonseparable linear canonical transform (2D NsLCT) is useful in optics, signal and image processing. To reduce the digital implementation complexity of the 2D NsLCT, some previous works decomposed the 2D NsLCT into several low-complexity operations, including 2D FT, 2D chirp multiplication (2D CM) and 2D affine transformations. However, 2D affine transformations will introduce interpolation error. In this paper, we propose a new decomposition called CM-CC-CM-CC decomposition, which decomposes the 2D NsLCT into two 2D CMs and two 2D chirp convolutions (2D CCs). No 2D affine transforms are involved. Simulation results show that the proposed methods have higher accuracy, lower computational complexity and smaller error in the additivity property compared with the previous works. Plus, the proposed methods have perfect reversibility property that one can reconstruct the input signal/image losslessly from the output.

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