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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Image reconstruction from continuous Gaussian-Hermite moments implemented by discrete algorithm
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Image reconstruction from continuous Gaussian-Hermite moments implemented by discrete algorithm

机译:利用离散算法实现的连续高斯-赫尔姆特矩图像重建

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摘要

The problem of image reconstruction from its statistical moments is particularly interesting to researchers in the domain of image processing and pattern recognition. Compared to geometric moments, the orthogonal moments offer the ability to recover much more easily the image due to their orthogonality, which allows reducing greatly the complexity of computation in the phase of reconstruction. Since the 1980s, various orthogonal moments, such as Legendre moments, Zernike moments and discrete Tchebichef moments have been introduced early or late to image reconstruction. In this paper, another set of orthonormal moments, the Gaussian-Hermite moments, based on Hermite polynomials modulated by a Gaussian envelope, is proposed to be used for image reconstruction. Especially, the papers focus is on the determination of the optimal scale parameter and the improvement of the reconstruction result by a post-processing which make Gaussian-Hermite moments be useful and comparable with other moments for image reconstruction. The algorithms for computing the values of the basis functions, moment computation and image reconstruction are also given in the paper, as well as a brief discussion on the computational complexity. The experimental results and error analysis by comparison with other moments show a good performance of this new approach.
机译:从统计时刻开始的图像重建问题对于图像处理和模式识别领域的研究人员来说尤其有趣。与几何矩相比,正交矩具有正交性,因此能够更轻松地恢复图像,从而可以大大降低重建阶段的计算复杂性。自1980年代以来,图像重建早晚引入了各种正交矩,例如勒让德(Legendre)矩,泽尼克(Zernike)矩和离散的切比切夫(Tchebichef)矩。本文提出了另一组正交矩,即高斯包络调制的Hermite多项式的高斯-赫尔姆特矩,用于图像重建。特别是,论文的重点是确定最佳比例参数和通过后处理来改善重建结果,这使得高斯-赫尔姆特矩有用,并且可以与其他矩进行图像重建。本文还给出了计算基函数值,矩量计算和图像重建的算法,并对计算复杂性进行了简要讨论。通过与其他时刻的比较,实验结果和误差分析显示了该新方法的良好性能。

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