同时估计反射率和照度的加权变分模型

Xueyang Fu, Delu Zeng, Yue Huang, Xiao-Ping Zhang, Xinghao Ding
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引用次数: 642

摘要

我们提出了一个加权变分模型来估计反射率和照度从观测图像。我们表明,尽管为了便于建模而广泛采用对数变换图像,但该任务的对数变换图像并不理想。在对对数变换研究的基础上,提出了一种新的加权变分模型,用于正则化项中更好的先验表示。与传统的变分模型不同,该模型可以更详细地保留估计的反射率。此外,该模型还能在一定程度上抑制噪声。采用交替最小化方案求解该模型。实验结果证明了该模型及其算法的有效性。与其他变分方法相比,所提出的方法在主观和客观评估上都产生了相当或更好的结果。
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A Weighted Variational Model for Simultaneous Reflectance and Illumination Estimation
We propose a weighted variational model to estimate both the reflectance and the illumination from an observed image. We show that, though it is widely adopted for ease of modeling, the log-transformed image for this task is not ideal. Based on the previous investigation of the logarithmic transformation, a new weighted variational model is proposed for better prior representation, which is imposed in the regularization terms. Different from conventional variational models, the proposed model can preserve the estimated reflectance with more details. Moreover, the proposed model can suppress noise to some extent. An alternating minimization scheme is adopted to solve the proposed model. Experimental results demonstrate the effectiveness of the proposed model with its algorithm. Compared with other variational methods, the proposed method yields comparable or better results on both subjective and objective assessments.
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