基于组合K-View的图像纹理分类算法

Yihua Lan, H. Ren, Yi Chen
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摘要

纹理特征在许多类型的图像中都是非常重要的属性。在计算机视觉中,基于纹理特征将图像划分为均匀区域是很有用的。许多纹理分类算法已经被提出,包括局部二值模式、灰度共生和基于K-View的算法等。其中,使用旋转不变特征算法(K-View- r)和快速加权K-View- voting算法(K-View- v)的K-View与原有基于K-View的算法相比,分类精度更高。然而,仍有一些改进的余地。本文在分析基于K-View的算法的基础上,尝试利用K-View- r和K-View- v的优点。提出了一种新的基于组合K-View的方法。为了验证该方法的有效性,对标准数据库中的大量纹理图像进行了实验。初步实验结果表明,与其他基于K-View的分类方法相比,新方法的分类精度更高。
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A Combinatorial K-View Based Algorithm for Image Texture Classification
Textural features is very important properties in many types of images. Partitioning an image into homogeneous regions based on textural features is useful in computer vision. Many texture classification algorithms have been proposed including Local Binary Patterns, Gray Level Co-Occurrence and K-View based algorithms, to name a few. Among of them, The K-View using Rotation-invariant feature algorithm (K-View-R) and the fast weighted K-View-Voting algorithm (K-View-V) produce higher classification accuracy by compare with those original K-View based algorithms. However, there still have some rooms for improvement. In this paper, by analyzing those K-View based algorithms, an attempt to utilize the advantages of the K-View-R and K-View-V was investigated. The new approach which we called combinatorial K-View based method was presented. To test and evaluate the proposed method, some experiments were carried out on a lot of textural images which taken from a standard database. Preliminary experimental results demonstrated the new method achieved more accurate classification by compare with other K-View based methods.
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