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基于加权帕曾窗和线性规划技术的图像阈值分割

Image thresholding segmentation based on weighted Parzen-window and linear programming techniques.

作者信息

Xiong Fusong, Zhang Zhiqiang, Ling Yun, Zhang Jian

机构信息

Soochow College, Soochow University, Suzhou, 215006, Jiangsu, China.

Collaborative Innovation Center of Novel Software Technology and Industrialization, Nanjing University, Nanjing, 210008, Jiangsu, China.

出版信息

Sci Rep. 2022 Aug 10;12(1):13635. doi: 10.1038/s41598-022-17818-4.

Abstract

Image segmentation by thresholding is an important and fundamental task in image processing and computer vision. In this paper, a new bi-level thresholding approach based on weighted Parzen-window and linear programming techniques is proposed to use in image thresholding segmentation. First, by proposing a weighted Parzen-window to describe the gray level distribution status, we obtain the boundaries for the foreground and background of the image. Then the image thresholding problem can be transformed into the problem of solving a linear programming problem for computing the coefficient values of weighted Parzen-window. The results of testing on synthetic, NDT and a set of benchmark images indicate that the proposed method can achieve a higher segmentation accuracy and robustness in comparison to some classical thresholding methods, such as inter class variance method (OTSU), Kapur's entropy-based method (KSW), and some state-of-art methods that consider spatial information, such as CHPSO, GLLV histogram method and GABOR histogram method.

摘要

通过阈值化进行图像分割是图像处理和计算机视觉中的一项重要且基础的任务。本文提出了一种基于加权Parzen窗口和线性规划技术的新型双阈值化方法,用于图像阈值分割。首先,通过提出加权Parzen窗口来描述灰度级分布状态,我们获得了图像前景和背景的边界。然后,图像阈值化问题可以转化为求解一个线性规划问题,以计算加权Parzen窗口的系数值。对合成图像、无损检测(NDT)图像和一组基准图像的测试结果表明,与一些经典的阈值化方法(如类间方差法(OTSU)、基于Kapur熵的方法(KSW))以及一些考虑空间信息的最新方法(如CHPSO、GLLV直方图方法和GABOR直方图方法)相比,该方法能够实现更高的分割精度和鲁棒性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/27b1/9365815/b08b987a4bd3/41598_2022_17818_Fig1_HTML.jpg

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