基于K均值算法和随机漫步的半监督图像分割

Cai Xiumei, Bian Jingwei, Wang Yan, Cui Qiaoqiao
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引用次数: 0

摘要

半监督图像分割是利用已知的标记信息对未标记像素进行分类的过程。为了实现图像分割,解决随机漫步算法中设置大量种子点的问题,解决K-means算法中的局部优化问题,本文提出了一种基于K-means算法和随机漫步的半监督图像分割算法。首先使用K-means算法进行聚类,确定聚类中心,然后基于随机游走算法计算每个未标记像素到种子点的转移概率,并根据转移概率完成图像分割。从实验结果可以看出,分割精度得到了很大的提高,验证了本文的有效性。
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Semi-supervised Image Segmentation Based on K- means Algorithm and Random Walk
Semi-supervised image segmentation is a process of classifying unlabeled pixels using known labeling information. In order to realize image segmentation, solve the problem of setting a large number of seed points in the random walk algorithm, and solve the local optimization problem in the K- means algorithm, this paper proposes a semi-supervised image segmentation algorithm based on the K-means algorithm and random walk. Firstly, the K-means algorithm is used for clustering to determine the clustering center, then, the transfer probability from each unlabeled pixel to the seed point is calculated based on the random walk algorithm, and the image segmentation is completed according to the transfer probability. It can be seen from the experimental results that the segmentation accuracy is greatly improved and the effectiveness of this paper is verified.
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