连续提取均匀纹理区域的视觉图像分割

A. Goltsev, V. Gritsenko, D. Húsek
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引用次数: 1

摘要

研究的目的是开发一种通用的算法,用于任何视觉图像的部分纹理分割。所提出的分割方法的主要特点是只提取图像中存在的均匀的细粒度纹理片段。首先,为图像中最大且最均匀的片段找到一个初始种子点。使用区域生长方法扩展段的初始种子点。以类似方式依次提取图像的其他纹理段。在第二阶段,对属于同一纹理类的提取片段进行合并。然后,将检测到的纹理段输入到具有竞争层的神经网络中,该神经网络可以更准确地描绘提取的纹理段的形状。所提出的分割过程是完全无监督的,即,它不使用任何先验知识,无论是纹理的类型或纹理段的数量在图像中。本文的研究成果是将该分割算法开发为计算机程序,并通过一系列实验验证了该算法在灰度自然场景上的有效性。
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Segmentation of Visual Images by Sequential Extracting Homogeneous Texture Areas
The purpose of the research is to develop a universal algorithm for partial texture segmentation of any visual images. The main peculiarity of the proposed segmentation procedure is the extraction of only homogeneous fine-grained texture segments present in the images. At first, an initial seed point is found for the largest and most homogeneous segment of the image. This initial seed point of the segment is expanded using a region growing method. Other texture segments of the image are extracted analogously in turn. At the second stage, the procedure of merging the extracted segments belonging to the same texture class is performed. Then, the detected texture segments are input to a neural network with competitive layers which accomplishes more accurate delineation of the shapes of the extracted texture segments. The proposed segmentation procedure is fully unsupervised, i.e., it does not use any a priori knowledge on either the type of textures or the number of texture segments in the image. The research results in development of the segmentation algorithm realized as a computer program tested in a series of experiments that demonstrate its efficiency on grayscale natural scenes.
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