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Face recognition via edge-based Gabor feature representation for plastic surgery-altered images

机译:通过基于边缘的Gabor特征表示进行人脸识别,以改变整形外科图像

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Plastic surgery procedures on the face introduce skin texture variations between images of the same person (intra-subject), thereby making the task of face recognition more difficult than in normal scenario. Usually, in contemporary face recognition systems, the original gray-level face image is used as input to the Gabor descriptor, which translates to encoding some texture properties of the face image. The texture-encoding process significantly degrades the performance of such systems in the case of plastic surgery due to the presence of surgically induced intra-subject variations. Based on the proposition that the shape of significant facial components such as eyes, nose, eyebrow, and mouth remains unchanged after plastic surgery, this paper employs an edge-based Gabor feature representation approach for the recognition of surgically altered face images. We use the edge information, which is dependent on the shapes of the significant facial components, to address the plastic surgery-induced texture variation problems. To ensure that the significant facial components represent useful edge information with little or no false edges, a simple illumination normalization technique is proposed for preprocessing. Gabor wavelet is applied to the edge image to accentuate on the uniqueness of the significant facial components for discriminating among different subjects. The performance of the proposed method is evaluated on the Georgia Tech (GT) and the Labeled Faces in the Wild (LFW) databases with illumination and expression problems, and the plastic surgery database with texture changes. Results show that the proposed edge-based Gabor feature representation approach is robust against plastic surgery-induced face variations amidst expression and illumination problems and outperforms the existing plastic surgery face recognition methods reported in the literature.
机译:面部整形手术过程会在同一个人(对象内)的图像之间引入皮肤纹理变化,从而使面部识别的任务比正常情况下更加困难。通常,在当代人脸识别系统中,原始的灰度人脸图像被用作Gabor描述符的输入,这转化为对人脸图像的某些纹理属性进行编码。在整形外科的情况下,由于存在手术引起的受试者体内变异,因此纹理编码过程会大大降低此类系统的性能。基于这样的假设,即在整形外科手术后,重要的面部组件(例如眼睛,鼻子,眉毛和嘴巴)的形状保持不变,因此本文采用基于边缘的Gabor特征表示方法来识别手术改变的面部图像。我们使用取决于重要面部组件形状的边缘信息来解决整容手术引起的纹理变化问题。为了确保重要的面部分量代表有用的边缘信息,而虚假边缘很少或没有虚假边缘,提出了一种简单的照明标准化技术进行预处理。将Gabor小波应用于边缘图像,以突出用于区分不同对象的重要面部分量的唯一性。在佐治亚理工学院(GT)和带有照明和表情问题的“野生野兽标记”数据库(LFW)以及具有纹理变化的整形外科数据库中评估了该方法的性能。结果表明,提出的基于边缘的Gabor特征表示方法在表情和照明问题中对整容手术引起的面部变化具有鲁棒性,并且优于文献中报道的现有整容手术面部识别方法。

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