图像中正则性估计的反问题公式

N. Pustelnik, P. Abry, H. Wendt, N. Dobigeon
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引用次数: 6

摘要

纹理变化的识别是一个具有挑战性的问题,可以通过考虑图像中的局部规则波动来解决。本研究开发了一种局部正则性估计方法,该方法将凸优化策略与小波前导相结合,小波前导是最近在多重分形分析中引入的特定小波系数。该方法将局部正则性指数的联合估计与正则性度量的最优权值的联合估计结合起来,形成一个逆问题。使用合成纹理的数值实验表明,该方法的性能优于其他基于小波的局部正则性估计公式。该方法还通过一个涉及现实世界纹理的例子进行了说明。
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Inverse problem formulation for regularity estimation in images
The identification of texture changes is a challenging problem that can be addressed by considering local regularity fluctuations in an image. This work develops a procedure for local regularity estimation that combines a convex optimization strategy with wavelet leaders, specific wavelet coefficients recently introduced in the context of multifractal analysis. The proposed procedure is formulated as an inverse problem that combines the joint estimation of both local regularity exponent and of the optimal weights underlying regularity measurement. Numerical experiments using synthetic texture indicate that the performance of the proposed approach compares favorably against other wavelet based local regularity estimation formulations. The method is also illustrated with an example involving real-world texture.
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