IMAGE SEGMENTATION BASED ON MULTIPLEX NETWORKS AND SUPER PIXELS

Ivo Socrates M. de Oliveira, O. C. Linares, Ary Henrique M. de Oliveira, G. Botelho, J. E. S. B. Neto
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引用次数: 2

Abstract

Despite the large number of techniques and applications in the field of image segmentation, it is still an open research field. A recent trend in image segmentation is the usage of graph theory. This work proposes an approach which combines community detection in multiplex networks, in which a layer represents a certain image feature, with super pixels. There are approaches for the segmentation of images of good quality that use a single feature or the combination of several features of the image forming a single graph for the detection of communities and the segmentation. However, with the use of multiplex networks it is possible to use more than one image feature without the need for mathematical operations that can lead to the loss of information of the image features during the generation of the graphs. Through the related experiments, presented in this work, it is possible to identify that such method can offer quality and robust segmentations.
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基于多路网络和超像素的图像分割
尽管在图像分割领域有大量的技术和应用,但它仍然是一个开放的研究领域。图像分割的最新趋势是图论的使用。本文提出了一种将多路网络中的社区检测与超像素相结合的方法,其中一层代表某一图像特征。对于高质量图像的分割,有一些方法是使用图像的单个特征或多个特征的组合形成单个图来检测社区和分割。然而,通过使用多路网络,可以使用多个图像特征,而不需要在生成图形期间导致图像特征信息丢失的数学运算。通过本工作中提出的相关实验,可以确定这种方法可以提供高质量和鲁棒性的分割。
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