基于高斯混合模型自动增强低照度图像

Liju Yin, Tingdong Kou, Xuan Wang, Guofeng Zou, Jinfeng Pan, Zhongshan Zhu
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引用次数: 0

摘要

作为第一种在弱光环境下传输信息的介质。热光图像成像技术需要低照度图像。由于外部因素的影响,图像质量会下降。例如,采样图像可能会变得模糊。本文提出了一种基于高斯混合模型的低照度图像自动增强方法。首先,用高斯混合模型对图像的直方图进行建模,并用加速收敛的期望最大化算法进行求解。然后,根据每个聚类的交集对直方图进行分割。最后,确定输出图像所属集群的映射关系,得到最终的增强图像。该算法可用于确定最佳簇数,加快算法的收敛速度。拉普拉斯算子值以及灰度平均梯度和对比度的客观评价(表 1)表明,该算法在保持图像细节的同时,有效地改善了图像对比度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Enhancement of Low Light Level Image on the Basis of a Gaussian Mixture Model
As the first medium to transmit information under a low light level environment. The low light level image is needed in hot-light image imaging technology. The quality of the image will be reduced given the influence of external factors. For example, a sampled image may become blurry. This paper proposes a method for automatic enhancement of low light level image on the basis of a Gaussian mixture model. First, the histogram of the image is modeled with a Gaussian mixture model that is solved by the expectation maximization algorithm of accelerated convergence. The histogram is then partitioned according to the intersection of each cluster. Finally, the mapping relationship of the cluster to which the output image belongs is ascertained and the final enhancement image is obtained. This algorithm can be used to identify the optimal number of clusters and accelerate the convergence speed of the algorithm. Objective evaluation of the Laplace operator value, as well as the grayscale average gradient and contrast (Tab. 1), indicates that the algorithm effectively improves image contrast while maintaining the details of the image.
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