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一种新型的基于自适应局部二值模式的纹理分类算法
引用本文:龚家强,李晓宁.一种新型的基于自适应局部二值模式的纹理分类算法[J].四川大学学报(自然科学版),2012,49(5):995-1002.
作者姓名:龚家强  李晓宁
作者单位:四川师范大学计算机科学学院,成都,610101
基金项目:四川省科技厅苗子工程项目(2011-053);可视化计算与虚拟现实四川省重点实验室课题(PJ201103);四川师范大学研究生科研创新基金项目(2011-022)
摘    要:局部二值模式(LBP)在纹理特征提取时,易受光照、旋转、噪声等复杂条件的影响.本文定义一种新型自适应局部二值模式,通过考虑模式的均匀度和相似度,来实现纹理模式分类和特征值计算.结合差分运算,分别在差分二值矩阵和差分绝对值矩阵上计算自适应纹理特征,并将两部分特征值连接成一个空域增强的特征向量,采用最近邻分类器完成图像分类识别.实验结果表明,该算法在复杂条件下具有更好的识别效果.

关 键 词:纹理特征提取  自适应局部二值模式  差分二值矩阵  差分绝对值矩阵
收稿时间:2012/3/20 0:00:00

A novel texture classification algorithm based on adaptive local binary pattern
GONG Jia-Qiang and LI Xiao-Ning.A novel texture classification algorithm based on adaptive local binary pattern[J].Journal of Sichuan University (Natural Science Edition),2012,49(5):995-1002.
Authors:GONG Jia-Qiang and LI Xiao-Ning
Abstract:The paper define a new adaptive local binary pattern, abbreviate ALBP, which employs the uniformity and similarity of texture patterns to classify different patterns and then re label them to enhance the robustness under different illuminant, noise, scaling, rotation, and translation. Combing with differential operation, a local region is represented not only by its local difference sign but also through magnitude matrix. Finally, the two part eigenvalues are concatenated into an enhancement feature vectors, and used for texture classification. The classification was conducted using a nearest neighborhood classifier in the computed feature space with Chi square as a dissimilarity measure. Experiments and comparisons show that the proposed method has better result under different rotation, illuminant and noise conditions.
Keywords:texture feature extraction  adaptive LBP  difference sign matrix  difference magnitude matrix
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