基于改进的帝国竞争算法和简单后处理的图像分割

V. Naghashi, S. Lotfi
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引用次数: 0

摘要

图像分割是许多图像处理应用的基本步骤。在大多数情况下,图像像素的聚类仅基于像素的强度或颜色信息,而在聚类过程中不使用像素的空间和邻域信息。考虑到包含像素空间信息对提高图像分割质量的重要性,并利用相邻像素的信息,使得分割精度得到提高。本文提出了k均值算法与改进的帝国主义竞争算法相结合的思想。在应用混合算法之前,先创建新图像,然后再使用混合算法。最后,对聚类后的图像进行简单的后处理。将该方法在不同图像上的结果与其他方法进行比较,结果表明,在大多数情况下,NLICA算法的精度优于其他方法。
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Image Segmentation using Improved Imperialist Competitive Algorithm and a Simple Post-processing
Image segmentation is a fundamental step in many of image processing applications. In most cases the image’s pixels are clustered only based on the pixels’ intensity or color information and neither spatial nor neighborhood information of pixels is used in the clustering process. Considering the importance of including spatial information of pixels which improves the quality of image segmentation, and using the information of the neighboring pixels, causes enhancing of the accuracy of segmentation. In this paper the idea of combining the K-means algorithm and the Improved Imperialist Competitive algorithm is proposed. Also before applying the hybrid algorithm, a new image is created and then the hybrid algorithm is employed. Finally, a simple post-processing is applied on the clustered image. Comparing the results of the proposed method on different images, with other methods, shows that in most cases, the accuracy of the NLICA algorithm is better than the other methods.
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