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首页> 外文期刊>Expert Systems with Application >Feature based local binary pattern for rotation invariant texture classification
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Feature based local binary pattern for rotation invariant texture classification

机译:基于特征的局部二进制模式用于旋转不变纹理分类

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The local binary pattern (LBP) descriptor is widely used in texture analysis because of its computational simplicity and robustness to illumination changes. However, LBP has limitations to fully capture discriminative information since only the sign information of the difference vector in a local region is used. To enhance the performance of LBP, we propose a new descriptor for texture classification feature based local binary pattern (FbLBP). In the proposed FbLBP, difference vector is decomposed into sign part and magnitude part, the sign part is described by conventional LBP, while the magnitude part is described by two features of the mean and the variance of the magnitude vector. The way we extract magnitude information in difference vector shows high complementarity to the sign part and less sensitive to illumination changes with a low dimensionality. Furthermore, an adaptive local threshold is used to convert these two features into binary codes. The proposed low dimensional FbLBP is very fast to construct and no parameters are required to tune for different kinds of databases. Experimental results on four representative texture databases of Outex, CUReT, UIUC, and XU_HR show that the proposed FbLBP achieves more than 10% improvement compared with conventional LBP and 1%-3% improvement compared with the best classification accuracy among other benchmarked state-of-the-art LBP variants. (C) 2017 Elsevier Ltd. All rights reserved.
机译:局部二进制图案(LBP)描述符由于其计算简单性和对光照变化的鲁棒性而广泛用于纹理分析。但是,由于仅使用局部区域中的差分矢量的符号信息,因此LBP在完全捕获区别信息方面具有局限性。为了提高LBP的性能,我们为基于纹理分类特征的局部二进制模式(FbLBP)提出了一个新的描述符。在提出的FbLBP中,差矢量被分解为符号部分和幅度部分,符号部分由传统的LBP描述,而幅度部分由幅度矢量的均值和方差两个特征描述。我们在差分矢量中提取幅度信息的方式显示出与符号部分的高度互补性,并且对低尺寸的照明变化不太敏感。此外,使用自适应局部阈值将这两个特征转换为二进制代码。所提出的低维FbLBP可以非常快速地构建,并且不需要参数即可针对不同种类的数据库进行调整。在Outex,CUReT,UIUC和XU_HR的四个代表性纹理数据库上的实验结果表明,与其他基准状态相比,与传统的LBP相比,拟议的FbLBP改善了10%以上,与最佳分类精度相比,改善了1%-3%最新的LBP变体。 (C)2017 Elsevier Ltd.保留所有权利。

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