Using SIFT Descriptors for Face Recognition Based on Neural Network and Kepenekci Approach

Samira Sirzadeh Haji Mahmood, Peyman Babaei
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Abstract

The principal objective of this paper is to develop a face matching method based on facial feature extraction. The first stage to build a robust face matching system is to extract corresponding points between a pair of images. A method based on feature vectors has been used to match images. Since the images illumination, motion, rotation, and scale are different, we have used the SIFT algorithm, which is robust to these variations, for extracting Keypoints. After determining Keypoints for both images and calculating their respective feature vectors, the degree of similarity between two images is evaluated. Besides, the feature vectors of the images are compared with the feature vectors of each reference image to determine the overall similarity between two images. In this paper, we use the SIFT algorithm along with the neural network and the Kepenekci approach and compare the results of these two methods.
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基于神经网络和Kepenekci方法的SIFT描述子人脸识别
本文的主要目的是开发一种基于人脸特征提取的人脸匹配方法。建立鲁棒人脸匹配系统的第一步是提取一对图像之间的对应点。提出了一种基于特征向量的图像匹配方法。由于图像的光照、运动、旋转和尺度不同,我们使用对这些变化具有鲁棒性的SIFT算法来提取关键点。在确定两幅图像的关键点并计算各自的特征向量后,评估两幅图像之间的相似程度。此外,将图像的特征向量与每个参考图像的特征向量进行比较,以确定两幅图像之间的总体相似度。在本文中,我们将SIFT算法与神经网络和Kepenekci方法结合使用,并比较了这两种方法的结果。
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