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Attraction-Repulsion Expectation-Maximization Algorithm for Image Reconstruction and Sensor Field Estimation

机译:用于图像重构和传感器场估计的吸引力-排斥期望最大化算法

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摘要

In this paper, we propose an attraction-repulsion expectation-maximization (AREM) algorithm for image reconstruction and sensor field estimation. We rely on a new method for density estimation to address the problems of image reconstruction from limited samples and sensor field estimation from randomly scattered sensors. Density estimation methods often suffer from undesirable phenomena such as over-fitting and over-smoothing. Specifically, various density estimation techniques based on a Gaussian mixture model (GMM) tend to cluster the Gaussian functions together, thus resulting in over-fitting. On the other hand, other approaches repel the Gaussian functions and yield over-smooth density estimates. We propose a method that seeks an equilibrium between over-fitting and over-smoothing in density estimation by incorporating attraction and repulsion forces among the Gaussian functions and determining the optimal balance between the competing forces experimentally. We model the attractive and repulsive forces by introducing the Gibbs and inverse Gibbs distributions, respectively. The maximization of the likelihood function augmented by the Gibbs density mixture is solved under the expectation-maximization (EM) method. Computer simulation results are provided to demonstrate the effectiveness of the proposed AREM algorithm in image reconstruction and sensor field estimation.
机译:在本文中,我们提出了一种吸引排斥期望最大化(AREM)算法,用于图像重建和传感器场估计。我们依靠一种新的密度估计方法来解决有限样本图像重建和随机分散传感器的传感器场估计问题。密度估计方法通常会遇到不良现象,例如过度拟合和过度平滑。具体而言,基于高斯混合模型(GMM)的各种密度估计技术倾向于将高斯函数聚类在一起,从而导致过度拟合。另一方面,其他方法则排斥高斯函数并产生过平滑的密度估计。我们提出了一种方法,该方法通过在高斯函数之间合并吸引力和排斥力并通过实验确定竞争力之间的最佳平衡,从而在密度估计中寻求过度拟合和过度平滑之间的平衡。我们分别通过引入吉布斯和逆吉布斯分布来模拟吸引力和排斥力。由吉布斯密度混合增加的似然函数的最大值是在期望最大值(EM)方法下求解的。提供的计算机仿真结果证明了所提出的AREM算法在图像重建和传感器场估计中的有效性。

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