Advanced combinations of splitting–shooting–integrating methods for digital image transformations

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An image consists of many discrete pixels with greyness of different levels, which can be quantified by greyness values. The greyness values at a pixel can also be represented by an integral as the mean of continuous greyness functions over a small pixel region. Based on such an idea, the discrete images can be produced by numerical integration; several efficient algorithms are developed to convert images under transformations. Among these algorithms, the combination of splitting–shooting–integrating methods (CSIM) is most promising because no solutions of nonlinear equations are required for the inverse transformation. The CSIM is proposed in [6] to facilitate images and patterns under a cycle transformations T−1T, where T is a nonlinear transformation. When a pixel region in two dimensions is split into N2 subpixels, convergence rates of pixel greyness by CSIM are proven in [8] to be only O(1/N). In [10], the convergence rates Op(1/N1.5) in probability and Op(1/N2) in probability using a local partition are discovered. The CSIM is well suited to binary images and the images with a few greyness levels due to its simplicity. However, for images with large (e.g., 256) multi-greyness levels, the CSIM still needs more CPU time since a rather large division number is needed.In this paper, a partition technique for numerical integration is proposed to evaluate carefully any overlaps between the transformed subpixel regions and the standard square pixel regions. This technique is employed to evolve the CSIM such that the convergence rate O(1/N2) of greyness solutions can be achieved. The new combinations are simple to carry out for image transformations because no solutions of nonlinear equations are involved in, either. The computational figures for real images of 256×256 with 256 greyness levels display that N=4 is good enough for real applications. This clearly shows validity and effectiveness of the new algorithms in this paper.

论文关键词:65N15,65D30,Minor 68A45,Numerical integration,Digital image,Image transformation,Pattern recognition

论文评审过程:Received 30 May 1998, Revised 10 February 1999, Available online 30 November 1999.

论文官网地址:https://doi.org/10.1016/S0377-0427(99)00086-2