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RGB-D face recognition using LBP with suitable feature dimension of depth image

机译:RGB-D使用LBP具有适当特征尺寸的深度图像的识别

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摘要

This study proposes a robust method for the face recognition from low-resolution red, green, and blue-depth (RGB-D) cameras acquired images which have a wide range of variations in head pose, illumination, facial expression, and occlusion in some cases. The local binary pattern (LBP) of the RGB-D images with the suitable feature dimension of Depth image is employed to extract the facial features. On the basis of error correcting output codes, they are fed to multiclass support vector machines (MSVMs) for the off-line training and validation, and then the online classification. The proposed method is called as the LBP-RGB-D-MSVM with the suitable feature dimension of the depth image. The effectiveness of the proposed method is evaluated by the four databases: Indraprastha Institute of Information Technology, Delhi (IIIT-D) RGB-D, visual analysis of people (VAP) RGB-D-T, EURECOM, and the authors. In addition, an extended database merged by the first three databases is employed to compare among the proposed method and some existing two-dimensional (2D) and 3D face recognition algorithms. The proposed method possesses satisfactory performance (as high as 99.10 ± 0.52% for Rank 5 recognition rate in their database) with low computation (62 ms for feature extraction) which is desirable for real-time applications.
机译:本研究提出了一种从低分辨率红色,绿色和蓝色深度(RGB-D)摄像机的面部识别的鲁棒方法获取的图像中具有宽范围的头部姿势,照明,面部表情和闭塞范围的图像案件。使用具有深度图像的合适特征尺寸的RGB-D图像的局部二进制图案(LBP)来提取面部特征。在纠错输出代码的基础上,它们被馈送到多字符支持向量机(MSVMS),用于离线训练和验证,然后是在线分类。所提出的方法称为LBP-RGB-D-MSVM,具有深度图像的合适特征尺寸。所提出的方法的有效性由四个数据库评估:Indraprastha信息技术研究所,德里(IIIT-D)RGB-D,人口(VAP)RGB-D-T,EURECOM和作者的视觉分析。另外,由前三个数据库合并的扩展数据库用于比较所提出的方法和一些现有的二维(2D)和3D面识别算法。该方法具有令人满意的性能(其数据库中的秩5识别率高达99.10±0.52%),具有低计算(用于特征提取62ms),这对于实时应用是可取的。

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