Geometric feature based face-sketch recognition

S. Pramanik, D. Bhattacharjee
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引用次数: 34

Abstract

This paper presents a novel facial sketch image or face-sketch recognition approach based on facial feature extraction. To recognize a face-sketch, we have concentrated on a set of geometric face features like eyes, nose, eyebrows, lips, etc and their length and width ratio because it is difficult to match photos and sketches because they belong to two different modalities. In this system, first the facial features/components from training images are extracted, then ratios of length, width, and area etc. are calculated and those are stored as feature vectors for individual images. After that the mean feature vectors are computed and subtracted from each feature vector for centering of the feature vectors. In the next phase, feature vector for the incoming probe face-sketch is also computed in similar fashion. Here, K-NN classifier is used to recognize probe face-sketch. It is experimentally verified that the proposed method is robust against faces are in a frontal pose, with normal lighting and neutral expression and have no occlusions. The experiment has been conducted with 80 male and female face images from different face databases. It has useful applications for both law enforcement and digital entertainment.
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基于几何特征的人脸素描识别
提出了一种基于人脸特征提取的人脸素描图像或人脸素描识别方法。为了识别人脸草图,我们集中研究了一组几何面部特征,如眼睛、鼻子、眉毛、嘴唇等,以及它们的长宽比,因为照片和草图属于两种不同的模态,很难匹配。在该系统中,首先从训练图像中提取面部特征/成分,然后计算长度、宽度和面积等的比率,并将其存储为单个图像的特征向量。然后计算平均特征向量,并从每个特征向量中减去特征向量的中心。在下一阶段,也以类似的方式计算输入的探针面部草图的特征向量。本文采用K-NN分类器对探针人脸进行识别。实验验证了该方法对正面、光照正常、表情中性、无遮挡的人脸具有较强的鲁棒性。该实验使用了来自不同面部数据库的80张男性和女性面部图像。它对执法和数字娱乐都有很好的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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