Rotation Invariant Texture Measured by Local Binary Pattern for Remote Sensing Image Classification

Cuiyu Song, Fengjie Yang, Peijun Li
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引用次数: 37

Abstract

Studies on rotation invariant texture in remote sensing image processing are relatively rare. Local Binary Pattern (LBP) is a relatively new rotation invariant texture measure which is theoretically simply but powerful. In this paper, the LBP operator was proposed to calculate texture features of the stimulant image derived from high-resolution remote sensing image. The produced texture image was combined with the spectral data in image classification to evaluate the performance of the rotation invariant texture measure. The result was compared to classifications using spectral data alone and plus traditional rotation variant texture images. Experiments demonstrate that compared to spectral classification, the classification overall accuracy can be significantly improved when the rotation invariant texture is included. The results also show that the rotation invariant texture result show a more than four percentage increase in overall accuracy, compared with the classification result with traditional Grey-Level Co- occurrence Matrix texture.
基于局部二值模式的旋转不变纹理遥感图像分类
旋转不变性纹理在遥感图像处理中的研究相对较少。局部二值模式(Local Binary Pattern, LBP)是一种较新的旋转不变纹理测量方法,理论上简单但功能强大。本文提出了基于LBP算子的高分辨率遥感图像刺激图像纹理特征计算方法。将生成的纹理图像与光谱数据结合进行图像分类,评价旋转不变性纹理测度的性能。将结果与单独使用光谱数据和加上传统旋转变体纹理图像的分类结果进行了比较。实验表明,与光谱分类相比,加入旋转不变性纹理可以显著提高分类总体精度。结果还表明,与传统的灰度共生矩阵纹理分类结果相比,旋转不变纹理结果的总体准确率提高了4%以上。
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