三维人脸数据的获取会受到成本以及可访问性的影响。通过对深度相机(如Xtion pro live)获取人脸数据过程的研究可知,它能够很容易获得彩色和深度结合(RGB-D)图。针对RGB-D图,使用局部和整体混合识别,利用局部二值的平均信息熵模式(LBEP)...三维人脸数据的获取会受到成本以及可访问性的影响。通过对深度相机(如Xtion pro live)获取人脸数据过程的研究可知,它能够很容易获得彩色和深度结合(RGB-D)图。针对RGB-D图,使用局部和整体混合识别,利用局部二值的平均信息熵模式(LBEP),快速提取RGB-D图的直方图信息和特征向量,根据不同区域在表情不同情况下的变化程度,对不同区域的识别效果赋予不同的权值,进行加权运算。实验结果表明,相比现有的二维和三维人脸识别算法,改进的LBEP算法识别率有明显的提升。展开更多
针对传统人脸识别方法在单样本条件下受姿态、表情、遮挡和光照影响识别效果不佳等问题,提出一种改进的纹理特征和边缘特征相结合的人脸描述算子ε-WLBD(ε-Weber Local Binary Descriptor)。先用改进的局部二值模式和改进的Kirsch算子...针对传统人脸识别方法在单样本条件下受姿态、表情、遮挡和光照影响识别效果不佳等问题,提出一种改进的纹理特征和边缘特征相结合的人脸描述算子ε-WLBD(ε-Weber Local Binary Descriptor)。先用改进的局部二值模式和改进的Kirsch算子进行纹理特征和边缘特征提取,然后分别进行直方图统计,并将其串接起来作为人脸识别的总体特征向量,最后利用最近邻算法进行分类识别。在YALE和AR人脸库上进行测试,实验结果表明所提方法简单有效,且对姿态、表情、遮挡和光照等变化具有较强鲁棒性,对单样本人脸描述具有较好的效果。展开更多
针对传统LBP(Local Binary Pattern)算法在DR图像缺陷检测中对噪声异常敏感而导致的缺陷识别率低的问题,在已有的韦伯LBP算法(Weber Local Binary Pattern,WLBP)的基础上,提出改进的WALBP(Weber Adapted Local Binary Patterns)算法。WA...针对传统LBP(Local Binary Pattern)算法在DR图像缺陷检测中对噪声异常敏感而导致的缺陷识别率低的问题,在已有的韦伯LBP算法(Weber Local Binary Pattern,WLBP)的基础上,提出改进的WALBP(Weber Adapted Local Binary Patterns)算法。WALBP算法保留了WLBP算法最后生成二维直方图的特点,对其所用的LBP算子和Lo G(Laplacian of Gaussian)方法进行了改进。WALBP算法更加有效地描述了DR图像的纹理特征,同时有效解决了WLBP算子在进行缺陷检测时直方图维数较多及分类能力不强的问题。通过对多幅铸件DR图像进行实验分析,结果表明,相对于已有的WLBP算法和传统的LBP算法,WALBP算法在缺陷检测上具有更高的识别率,在缺陷识别技术中具有很高的应用价值。展开更多
An algorithm for face description and recognition based on multi-resolution with multi-scale local binary pattern (multi-LBP) features is proposed. The facial image pyramid is constructed and each facial image is di...An algorithm for face description and recognition based on multi-resolution with multi-scale local binary pattern (multi-LBP) features is proposed. The facial image pyramid is constructed and each facial image is divided into various regions from which partial and holistic local binary patter (LBP) histograms are extracted. All LBP features of each image are concatenated to a single LBP eigenvector with different resolutions. The dimensionaUty of LBP features is then reduced by a local margin alignment (LMA) algorithm based on manifold, which can preserve the between-class variance. Support vector machine (SVM) is applied to classify facial images. Extensive experiments on ORL and CMU face databases clearly show the superiority of the proposed scheme over some existed algorithms, especially on the robustness of the method against different facial expressions and postures of the subjects.展开更多
文摘三维人脸数据的获取会受到成本以及可访问性的影响。通过对深度相机(如Xtion pro live)获取人脸数据过程的研究可知,它能够很容易获得彩色和深度结合(RGB-D)图。针对RGB-D图,使用局部和整体混合识别,利用局部二值的平均信息熵模式(LBEP),快速提取RGB-D图的直方图信息和特征向量,根据不同区域在表情不同情况下的变化程度,对不同区域的识别效果赋予不同的权值,进行加权运算。实验结果表明,相比现有的二维和三维人脸识别算法,改进的LBEP算法识别率有明显的提升。
文摘针对传统人脸识别方法在单样本条件下受姿态、表情、遮挡和光照影响识别效果不佳等问题,提出一种改进的纹理特征和边缘特征相结合的人脸描述算子ε-WLBD(ε-Weber Local Binary Descriptor)。先用改进的局部二值模式和改进的Kirsch算子进行纹理特征和边缘特征提取,然后分别进行直方图统计,并将其串接起来作为人脸识别的总体特征向量,最后利用最近邻算法进行分类识别。在YALE和AR人脸库上进行测试,实验结果表明所提方法简单有效,且对姿态、表情、遮挡和光照等变化具有较强鲁棒性,对单样本人脸描述具有较好的效果。
文摘针对传统LBP(Local Binary Pattern)算法在DR图像缺陷检测中对噪声异常敏感而导致的缺陷识别率低的问题,在已有的韦伯LBP算法(Weber Local Binary Pattern,WLBP)的基础上,提出改进的WALBP(Weber Adapted Local Binary Patterns)算法。WALBP算法保留了WLBP算法最后生成二维直方图的特点,对其所用的LBP算子和Lo G(Laplacian of Gaussian)方法进行了改进。WALBP算法更加有效地描述了DR图像的纹理特征,同时有效解决了WLBP算子在进行缺陷检测时直方图维数较多及分类能力不强的问题。通过对多幅铸件DR图像进行实验分析,结果表明,相对于已有的WLBP算法和传统的LBP算法,WALBP算法在缺陷检测上具有更高的识别率,在缺陷识别技术中具有很高的应用价值。
基金supported by the National Natural Science Foundation of China under Grant No. 60973070
文摘An algorithm for face description and recognition based on multi-resolution with multi-scale local binary pattern (multi-LBP) features is proposed. The facial image pyramid is constructed and each facial image is divided into various regions from which partial and holistic local binary patter (LBP) histograms are extracted. All LBP features of each image are concatenated to a single LBP eigenvector with different resolutions. The dimensionaUty of LBP features is then reduced by a local margin alignment (LMA) algorithm based on manifold, which can preserve the between-class variance. Support vector machine (SVM) is applied to classify facial images. Extensive experiments on ORL and CMU face databases clearly show the superiority of the proposed scheme over some existed algorithms, especially on the robustness of the method against different facial expressions and postures of the subjects.