基于局部二值模式新映射的织物分类

Amir Reza Rezvan Talab, M. H. Shakoor
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引用次数: 3

摘要

本研究提出了一种新的局部二值模式映射技术用于纹理分类。映射是一种从提取的特征中生成特征向量的方法。这种映射方法是基于扩展非均匀模式,以便更好地对图案织物中的缺陷进行分类。通过扩展非均匀模式,提出了一种新的映射技术,可以从纹理中提取更多的判别特征。这种新的映射可以用于各种类型的LBP,并对CLBP算子进行了测试,以显示分类精度的提高。所开发的映射技术具有旋转不变性,并且具有以往方法的所有正点。该方法可以将非均匀模式编码为多个特征,从而产生明显的特征和更好的分类率。在我们的模式数据集上的实现表明,所提出的映射方法可以提高分类精度。此外,该方法提高了所有类型的lbp的分类率,特别是那些具有大邻域的lbp。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fabric classification using new mapping of local binary pattern
This research proposes a new mapping technique of Local Binary Patterns (LBPs) for texture classification. Mapping is an approach for producing a vector of features from the features that are extracted. This mapping method is based on extending nonuniform patterns for better classification of defects in patterned fabrics. By extending nonuniform patterns, a new mapping technique is suggested that extracts more discriminative features from textures. This new mapping can be used for various types of LBP and is tested for CLBP operator to show the improvement on the accuracy of the classification. The developed mapping technique is rotation invariant and has all the positive points of previous approaches. The proposed approach can code nonuniform patterns into more than one feature for producing distinctive features and better classification rate. Implementation of the proposed mapping on our patterned dataset shows that proposed method can improve the classification accuracy. Besides, the suggested approach improves the classification rate for all types of LBPs, particularly those with large neighborhoods.
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