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Enhanced human face image searching system using relevance feedback

机译:使用相关性反馈的增强型人脸图像搜索系统

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This paper addresses the problems of face recognition using sketch. All existing face sketch recognition systems focus on the sketch to mug shot matching. However, one of the key problems is that very often witness cannot reconstruct the sketch well. In turn, it does not look like the mug shot image. The performance of existing systems are greatly degraded. To overcome this limitation, this paper makes use of the concept of human-in-the-loop and proposes a human face image searching system using relevance feedback. The proposed system employs linear discriminant analysis for on-line learning the optimal projection subspace for face representation. The proposed system has been evaluated using FERET database and a Japanese database with hundreds of individual with all frontal view face images. The results are encouraging.
机译:本文解决了使用素描进行人脸识别的问题。现有的所有面部素描识别系统都将重点放在草图上以进行面部快照匹配。但是,关键问题之一是证人经常无法很好地重建草图。反过来,它看起来也不像马克杯拍摄的图像。现有系统的性能大大降低。为了克服这一局限性,本文利用“在环人”的概念,提出了一种利用相关反馈的人脸图像搜索系统。所提出的系统采用线性判别分析,以在线学习用于面部表示的最佳投影子空间。使用FERET数据库和日语数据库对提议的系统进行了评估,该数据库具有数百个人的所有正视面部图像。结果令人鼓舞。

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