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Face Image Retrieval System Using TFV and Combination of Subimages

机译:基于TFV和子图像组合的人脸图像检索系统

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摘要

Face image can be seen as a complex visual object, which combines a set of characterizing facial features. These facial features are crucial hints for machine to distinguish different face images. However, the face image also contains certain amount of redundant information which can not contribute to the face image retrieval task. Therefore, in this paper we propose a retrieval system which is aim to eliminate such effect at three different levels. The Ternary Feature Vector (TFV) is generated from quantized block transform coefficients. Histograms based on TFV are formed from certain subimages. Through this way, irrelevant information is gradually removed, and the structural and statistical information are combined. We testified our ideas over the public face database FERET with the Cumulative Match Score evaluation. We show that proper selection of subimage and feature vectors can significantly improve the performance with minimized complexity. Despite of the simplicity, the proposed measures provide results which are on par with best results using other methods.
机译:脸部图像可以看作是一个复杂的视觉对象,它结合了一组表征性的脸部特征。这些面部特征是机器区分不同面部图像的关键提示。但是,人脸图像还包含一定数量的冗余信息,这些信息无法参与人脸图像检索任务。因此,在本文中,我们提出了一种旨在在三个不同级别上消除这种影响的检索系统。三元特征向量(TFV)由量化的块变换系数生成。基于TFV的直方图由某些子图像形成。通过这种方式,逐渐删除了不相关的信息,并将结构和统计信息结合在一起。我们使用累积匹配分数评估在公众脸数据库FERET上证明了我们的想法。我们表明正确选择子图像和特征向量可以以最小的复杂度显着提高性能。尽管很简单,但所提出的措施仍可提供与使用其他方法可获得的最佳结果相同的结果。

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