The total variation (TV) regularization has phenomenally boosted various variational models for image processing tasks. We propose to combine the backward diffusion process in the earlier literature of image enhancement with the TV regularization, and show that the resulting enhanced TV minimization model is particularly effective for reducing the loss of contrast. The main purpose of this paper is to establish stable reconstruction guarantees for the enhanced TV model from noisy subsampled measurements with two sampling strategies, non-adaptive sampling for general linear measurements and variable-density sampling for Fourier measurements. In particular, under some weaker restricted isometry property conditions, the enhanced TV minimization model is shown to have tighter reconstruction error bounds than various TV-based models for the scenario where the level of noise is significant and the amount of measurements is limited. Advantages of the enhanced TV model are also numerically validated by preliminary experiments on the reconstruction of some synthetic, natural, and medical images.
翻译:总的变异(TV)正规化极大地促进了图像处理任务的各种变异模式。我们提议将先前的图像改进文献中的后向扩散过程与电视正规化结合起来,并表明由此而形成的增强的电视最小化模型对于减少对比损失特别有效。本文的主要目的是为强化的电视模型建立稳定的重建保障,从噪音小样抽样测量中以两种取样策略对增强的电视模型进行稳定的重建保障,即非适应性取样,用于一般线性测量,以及Fourier测量的可变密度取样。特别是在一些较弱的限制性异度属性条件下,强化的电视最小化模型比各种基于电视的模型有更严格的重建错误界限,对于噪音程度大且测量量有限的情景,强化的电视模型的优势也通过一些合成、自然和医学图像的重建初步实验从数字上加以验证。