Image segmentation improvement by reversible segment merging

I. Khanykov, M. Kharinov, Chirag Patel
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引用次数: 10

Abstract

The paper focuses on image segmentation by means of approaching by piecewise-constant approximations. The objective is the improvement of the segmented image, expressed in the noticeable drop of image approximation error (total squared error). The proposed method involves segment dividing into two in some image part and merge of a pair of adjacent segments in another image part, keeping a total segment number constant. For further enhancement of the segmentation, the proposed method is used in combination with advanced K-means method. The steep decline of the approximation error is provided along with obvious increase of perceptual quality of image segmentation. The effect is achieved owing to binary adaptive hierarchy of nested segments, generated for each segment. The segmentation improvement method is usable for the advancement of the computer vision systems using conventional segmentation by partitioning image into connected segments.
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基于可逆段合并的图像分割改进
本文主要研究了一种基于分段常数近似的图像分割方法。目标是改进分割后的图像,表现为图像近似误差(总平方误差)的显著下降。该方法在保持总段数不变的情况下,将某一图像部分的段分割为两个,并在另一图像部分对相邻的段进行合并。为了进一步增强分割效果,将该方法与先进的K-means方法结合使用。近似误差急剧下降,图像分割的感知质量明显提高。该效果是由于为每个段生成的嵌套段的二进制自适应层次结构而实现的。该分割改进方法可用于改进计算机视觉系统使用传统的分割方法,即将图像分割成相互连接的部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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