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Texture descriptor based on partially self-avoiding deterministic walker on networks

机译:基于部分自我规避的确定性Walker的纹理描述符

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摘要

Texture image analysis is an important field of investigation that has attracted the attention from computer vision community in the last decades. In this paper, a novel approach for texture image analysis is proposed by using a combination of graph theory and partially self-avoiding deterministic walks. From the image, we build a regular graph where each vertex represents a pixel and it is connected to neighboring pixels (pixels whose spatial distance is less than a given radius). Transformations on the regular graph are applied to emphasize different image features. To characterize the transformed graphs, partially self-avoiding deterministic walks are performed to compose the feature vector. Experimental results on three databases indicate that the proposed method significantly improves correct classification rate compared to the state-of-the-art, e.g. from 89.37% (original tourist walk) to 94.32% on the Brodatz database, from 84.86% (Gabor filter) to 85.07% on the Vistex database and from 92.60% (original tourist walk) to 98.00% on the plant leaves database. In view of these results, it is expected that this method could provide good results in other applications such as texture synthesis and texture segmentation.
机译:纹理图像分析是一个重要的研究领域,最近几十年来引起了计算机视觉界的关注。本文提出了一种新颖的纹理图像分析方法,该方法结合了图论和部分自避免的确定性遍历。从图像中,我们构建一个规则图,其中每个顶点代表一个像素,并将其连接到相邻的像素(空间距离小于给定半径的像素)。应用正则图上的变换以强调不同的图像特征。为了表征变换后的图,执行了部分自我规避的确定性行走,以构成特征向量。在三个数据库上进行的实验结果表明,与最新技术(例如,现有技术)相比,该方法可显着提高正确的分类率。在Brodatz数据库上从89.37%(原始游客步行)到94.32%,在Vistex数据库上从84.86%(Gabor过滤器)到85.07%,在植物叶子数据库上从92.60%(原始游客步行)到98.00%。鉴于这些结果,预期该方法可以在诸如纹理合成和纹理分割的其他应用中提供良好的结果。

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