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Human Ear Recognition Using Geometrical Features Extraction

机译:使用几何特征提取的人耳识别

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The biometrics recognition has been paid more attention by people with the advancement of technology nowadays. The human ear is a perfect source of data for passive person identification. Ear seems to be a good candidate solution since ear is visible, their images are easy to take and structure of ear does not change radically over time. Ear satisfies biometric characteristic (universality, distinctiveness, permanence and collectability). In this paper we presented a new algorithm for ear recognition based on geometrical features extraction like (shape, mean, centroid and Euclidean distance between pixels). Firstly, we made a pre-processing phase by making all images have the same size. Then we used the snake model to detect the ear, and we applied median filter to remove noise, also we converted the images to binary format. After that we used canny edge and made some enhancement on the image, largest boundary is calculated and distance matrix is created then we extracted the image features. Finally, the extracted features were classified by using nearest neighbor with absolute error distance. This method is invariant to scaling, translation and rotation. The experimental results showed that the proposed approach gives better results and obtained over all accuracy almost 98%.
机译:随着当今技术的发展,生物识别技术已受到人们的更多关注。人耳是被动身份识别的理想数据来源。耳朵似乎是一个很好的候选解决方案,因为耳朵是可见的,它们的图像易于拍摄,并且耳朵的结构不会随时间而发生根本变化。耳朵满足生物特征(通用性,独特性,永久性和可收藏性)。在本文中,我们提出了一种基于几何特征提取(如像素之间的形状,均值,质心和欧式距离)的人耳识别新算法。首先,我们通过使所有图像具有相同大小来进行预处理。然后,我们使用蛇模型检测耳朵,并应用中值滤波器去除噪声,还将图像转换为二进制格式。之后,我们使用Canny边缘对图像进行了一些增强,计算出最大边界并创建了距离矩阵,然后提取了图像特征。最后,使用具有绝对误差距离的最近邻对提取的特征进行分类。此方法对于缩放,平移和旋转不变。实验结果表明,提出的方法给出了更好的结果,并且在所有精度上均获得了近98%的精度。

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