Product of Gaussian Mixture Diffusion Models

IF 1.3 4区 数学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Martin Zach, Erich Kobler, Antonin Chambolle, Thomas Pock
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Abstract

In this work, we tackle the problem of estimating the density \( f_X \) of a random variable \( X \) by successive smoothing, such that the smoothed random variable \( Y \) fulfills the diffusion partial differential equation \( (\partial _t - \Delta _1)f_Y(\,\cdot \,, t) = 0 \) with initial condition \( f_Y(\,\cdot \,, 0) = f_X \). We propose a product-of-experts-type model utilizing Gaussian mixture experts and study configurations that admit an analytic expression for \( f_Y (\,\cdot \,, t) \). In particular, with a focus on image processing, we derive conditions for models acting on filter, wavelet, and shearlet responses. Our construction naturally allows the model to be trained simultaneously over the entire diffusion horizon using empirical Bayes. We show numerical results for image denoising where our models are competitive while being tractable, interpretable, and having only a small number of learnable parameters. As a by-product, our models can be used for reliable noise level estimation, allowing blind denoising of images corrupted by heteroscedastic noise.

Abstract Image

高斯混合扩散模型的乘积
在这项工作中,我们要解决的问题是通过连续平滑来估计随机变量 \( X \) 的密度 \( f_X \)、使得平滑后的随机变量\( Y\) 满足扩散偏微分方程\( (\partial _t - \Delta _1)f_Y(\,\cdot \,, t) = 0 \),初始条件为\( f_Y(\,\cdot \,, 0) = f_X \)。我们提出了一种利用高斯混合物专家的专家产品型模型,并研究了允许对 \( f_Y (\,\cdot \, t) \) 进行解析表达的配置。特别是,以图像处理为重点,我们推导出了作用于滤波、小波和小剪响应的模型条件。我们的构造自然允许使用经验贝叶斯在整个扩散范围内同时训练模型。我们展示了图像去噪的数值结果,在这些结果中,我们的模型是有竞争力的,同时也是可操作、可解释的,并且只有少量可学习参数。作为副产品,我们的模型可用于可靠的噪声水平估计,从而对受异速噪声干扰的图像进行盲去噪。
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来源期刊
Journal of Mathematical Imaging and Vision
Journal of Mathematical Imaging and Vision 工程技术-计算机:人工智能
CiteScore
4.30
自引率
5.00%
发文量
70
审稿时长
3.3 months
期刊介绍: The Journal of Mathematical Imaging and Vision is a technical journal publishing important new developments in mathematical imaging. The journal publishes research articles, invited papers, and expository articles. Current developments in new image processing hardware, the advent of multisensor data fusion, and rapid advances in vision research have led to an explosive growth in the interdisciplinary field of imaging science. This growth has resulted in the development of highly sophisticated mathematical models and theories. The journal emphasizes the role of mathematics as a rigorous basis for imaging science. This provides a sound alternative to present journals in this area. Contributions are judged on the basis of mathematical content. Articles may be physically speculative but need to be mathematically sound. Emphasis is placed on innovative or established mathematical techniques applied to vision and imaging problems in a novel way, as well as new developments and problems in mathematics arising from these applications. The scope of the journal includes: computational models of vision; imaging algebra and mathematical morphology mathematical methods in reconstruction, compactification, and coding filter theory probabilistic, statistical, geometric, topological, and fractal techniques and models in imaging science inverse optics wave theory. Specific application areas of interest include, but are not limited to: all aspects of image formation and representation medical, biological, industrial, geophysical, astronomical and military imaging image analysis and image understanding parallel and distributed computing computer vision architecture design.
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