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Implementation of perceptual resemblance of local plastic surgery facial images using Near Sets

机译:使用Near Sets实现局部整形手术面部图像的感知相似性

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When an individual undergo plastic surgery, the facial features are again constructed either in global or local way. Generally, this process changes the look of an individual. As these procedures become more and more common, future face recognition systems will be challenged to recognize individuals after plastic surgery has been performed. However, to alleviate the problems of face recognition after local plastic surgery of faces, we have proposed a system for perceptual resemblance of plastic surgery facial images using Near Sets. Here we have started with collection of Plastic surgery facial images database. In our work we have concentrated on three type of surgery Rhinoplasty, Blepharoplasty and Lip Augmentation. After obtaining both pre-surgery and post-surgery images we extract the features. We explore three different types of surgery with five facial features namely Average Grey, Normalized R, Normalized G, Normalized B, Shannon's Entropy. After feature extraction we found tolerance class of the features obtained. This tolerance class will tell us which object belongs to which class. Here Near set theory is used to find resemblance between objects in a different sets. The practical application of near set theory on the before and after plastic surgery facial images is to extract resemblance between them. Near set theory measure the degree of resemblance of facial images before and after plastic surgery. tHD, tNM and tHm is being used to measure the degree of similarity between plastic surgery images. tHD measure shows around 100% nearness as compared to tNM and tHM for all features. These measure can also be used in increasing the efficiency of any face recognition system.
机译:当一个人进行整形手术时,面部特征又以整体或局部方式被构造。通常,此过程会更改个人外观。随着这些程序变得越来越普遍,在进行整容手术后,未来的面部识别系统将难以识别个人。然而,为了减轻局部面部整形手术后的面部识别问题,我们提出了一种使用“近距离集”在整形手术面部图像上进行感知相似的系统。在这里,我们开始收集整容手术面部图像数据库。在我们的工作中,我们专注于鼻整形术,眼睑整形术和隆唇术的三种类型的手术。在获得手术前和手术后的图像后,我们提取特征。我们探索具有五种面部特征的三种不同类型的手术,即平均灰色,标准化R,标准化G,标准化B,香农熵。特征提取后,我们找到了获得特征的公差等级。该公差等级将告诉我们哪个对象属于哪个等级。在这里,近集理论用于发现不同集合中对象之间的相似性。近集理论在整形手术前后的面部图像上的实际应用是提取它们之间的相似性。近集理论可测量整形手术前后面部图像的相似程度。 tHD,tNM和tHm用于测量整形外科图像之间的相似程度。与所有特征的tNM和tHM相比,tHD测量显示出约100%的接近度。这些措施也可以用于提高任何面部识别系统的效率。

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