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首页> 外文期刊>Pattern Analysis and Applications >Multiscale binarised statistical image features for symmetric face matching using multiple descriptor fusion based on class-specific LDA
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Multiscale binarised statistical image features for symmetric face matching using multiple descriptor fusion based on class-specific LDA

机译:基于特定类别LDA的多描述符融合的多尺度二值化统计图像特征用于对称人脸匹配

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摘要

Local binary image coding for face image representation is established as a successful methodology mostly popularized by the well-known local binary pattern operator (LBP) and its variants. In this paper, an alternative learning-based binary image coding scheme is introduced which operates by projecting local image patches linearly onto a subspace using learnt filters. Most importantly, independent binarisation of filter responses is justified theoretically using independent component analysis in the filter learning stage. The extension of the method to a multiscale framework makes the feature capable to capture image content at multiple resolutions, improving its expressive power. Taking a local feature-based approach, the coded images are summarised regionally by histograms exploiting dense correspondences between images. A discriminative face image descriptor is constructed next by projecting the regional multiscale histograms onto a class-specific LDA space. The proposed discriminative descriptor can be learnt in an unsupervised fashion and hence perfectly suited for face recognition in unconstrained settings, including the unseen face pair matching task. Finally, the proposed MBSIF descriptor is combined with two state-of-the-art face image representations, namely the multiscale LBP and local phase quantisation features to further enhance the accuracy. The proposed approach has been evaluated extensively on the extended Yale B, LFW, FERET and the XM2VTS databases in various scenarios and shown to perform very favourably compared to the state-of-the-art methods.
机译:建立用于面部图像表示的本地二进制图像编码是一种成功的方法,该方法主要由众所周知的本地二进制模式运算符(LBP)及其变体广泛推广。在本文中,引入了另一种基于学习的二进制图像编码方案,该方案通过使用学习的滤波器将局部图像块线性投影到子空间上进行操作。最重要的是,在滤波器学习阶段使用独立分量分析从理论上证明了滤波器响应的独立二值化是合理的。该方法扩展到多尺度框架,使得该功能能够以多种分辨率捕获图像内容,从而提高其表达能力。采用基于局部特征的方法,利用图像之间的密集对应关系,通过直方图对编码图像进行区域汇总。接下来,通过将区域多尺度直方图投影到特定于类的LDA空间上,构造出可区分的面部图像描述符。可以以无监督的方式学习建议的区分描述符,因此非常适合在不受约束的环境中进行面部识别,包括看不见的面部对匹配任务。最后,提出的MBSIF描述符与两个最新的人脸图像表示(即多尺度LBP和局部相位量化功能)组合在一起,以进一步提高准确性。在各种情况下,已对扩展的Yale B,LFW,FERET和XM2VTS数据库进行了广泛评估,并且与最新方法相比,该方法的执行效果非常好。

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