i) Towards theoretically-founded learning-based denoising
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Towards theoretically-founded learning-based denoising

机译:朝着理论上创立的基于学习的去噪

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Denoising a stationary process (Xi)i∈? corrupted by additive white Gaussian noise (Zi)i∈?, i.e., recovering Xn from Yn = Xn + Zn, is a classic and fundamental problem in information theory and statistical signal processing. Theoretically-founded and computationally-efficient denoising algorithms which are applicable to general sources are yet to be found. In a Bayesian setup, given the distribution of Xn, a minimum mean square error (MMSE) denoiser computes E[Xn|Yn]. However, for general sources, computing E[Xn|Yn] is computationally very challenging, if not infeasible. In this paper, starting from a Bayesian setup, a novel denoiser, namely, quantized maximum a posteriori (Q-MAP) denoiser, is proposed and its asymptotic performance is analyzed. Both for memoryless sources, and for structured first-order Markov sources, it is shown that, asymptotically, as σ2 (noise variance) converges to zero, $rac{1}{{{sigma ^2}}}{ext{E}}left[ {{{left( {{X_i} - hat X_i^{{ext{Q - MAP}}}} ight)}^2}} ight]$ converges to the information dimension of the source. For the studied memoryless sources, this limit is known to be optimal. A key advantage of the Q-MAP denoiser is that, unlike a MMSE denoiser, it highlights the key properties of the source distribution that are to be used in its denoising. This naturally leads to a learning-based denoising algorithm. Using ImageNet database for training, initial simulation results exploring the performance of such a learning-based denoiser in image denoising are presented.
机译:去寻找静止过程(x i i∈? 被添加白色高斯噪声损坏(Z. i i∈?,即,恢复x n 来自Y. n = X. n + Z. n ,是信息理论和统计信号处理中的经典和根本问题。应用于通用来源的理论上创立的和计算上有效的去噪算法。在拜耳设置中,鉴于X的分布 n ,最小均方误差(MMSE)Denoiser计算E [x n | Y. n ]。但是,对于一般来源,计算e [x n | Y. n 如果不是不可行的话,计算非常具有挑战性。在本文中,从贝叶斯设置开始,提出了一种新颖的欺诈者,即量化的最大后(Q-MAP)丹机,并分析了其渐近性能。无论是无记忆源,还针对结构化的一阶马尔可夫源,都显示出渐近的,如σ 2 (噪声方差)会聚到零,$ frac {1} {{{ sigma ^ 2}}} { text {e}}左[{{{{ left({{x_i} - hat x_i ^ { { text {q-map}}}}}}}}}} ^ 2}} revally] $'收敛到源的信息维度。对于学习的无核来源,已知该限制是最佳的。 Q-Map Denoiser的一个关键优势在于,与MMSE Denoiser不同,它突出显示要在其去噪中使用的源分布的关键属性。这自然导致基于学习的去噪算法。介绍了使用ImageNet数据库进行培训,初始仿真结果探讨了这种基于学习的去噪者在图像去噪中的表现。

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