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Robust face recognition of inferior quality images using Local Gabor Phase Quantization

机译:利用本地Gabor相位量化的鲁棒面部识别劣质图像

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Inferior quality images often pose a major challenge in the domain of face recognition. This paper presents a scheme for face recognition which can not only work efficiently on standard databases but also on inferior quality images having low and medium resolutions. The proposed framework uses Local Gabor Phase Quantizers (LGPQ) to compensate for the quality of the images. In this framework, a probe face image is taken as input, which undergoes preprocessing for photometric corrections. The preprocessed image undergoes Gabor transformation, where Local Phase Quantizers are applied independently on each frame to obtain the signature histograms. These histograms are finally matched with the gallery image weights using Principal Component Analysis (PCA). The framework has been tested on images selected from the CMU, AR, Yale databases.
机译:劣质的图像经常在人脸识别领域构成主要挑战。本文介绍了面部识别的方案,不仅可以在标准数据库上有效地工作,而且还可以在具有低和中间分辨率的劣质图像上工作。所提出的框架使用本地Gabor相位量增热剂(LGPQ)来补偿图像的质量。在该框架中,将探测面图像被用作输入,其经历预处理以用于光度校正。预处理的图像经历了Gabor变换,其中局部相位量化器在每个帧上独立地应用以获得签名直方图。这些直方图最终与使用主成分分析(PCA)的画廊图像权重匹配。该框架已在从CMU,AR,Yale数据库中选择的图像上进行了测试。

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