Normalization and feature extraction on ear images

E. González, L. Álvarez, L. Mazorra
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引用次数: 15

Abstract

Ear image analysis is an emerging biometrie application. A method for normalizing ear images and extracting from them a set of measurable features (feature vector) that can be used to identify its owner is proposed. The identification would be made based on the comparison between the feature vector of the input image and all feature vectors of the images in the database we work with. The feature vector is based on the ear contours. One important goal of this paper is to identify the most significant areas in the ear contour for human being identification purpose. Another important contribution of the paper is the combination of active contours techniques and ovoid model ear fitting (used to normalize ear features) and a high accurate invariant approach of internal and external ear contours. Ear geometry is characterized using a set of distances to external and internal contours points. This set of distances, along with six ovoid parameters is considered as the feature vector of the image. To test the method a new ear images database has been created. The proposed method identifies front-parallel views pretty good, even when varying the distance of the individual to the camera or the camera lens.
耳图像的归一化与特征提取
耳图像分析是一种新兴的生物识别技术。提出了一种将耳图像归一化并从中提取一组可测量特征(特征向量)的方法,该特征向量可用于识别其所有者。将输入图像的特征向量与我们使用的数据库中所有图像的特征向量进行比较,从而进行识别。特征向量是基于耳朵轮廓的。本文的一个重要目标是识别出耳朵轮廓中最重要的区域,以供人类识别。本文的另一个重要贡献是结合了主动轮廓技术和卵形模型耳拟合(用于归一化耳特征)以及高精度的内耳和外耳轮廓不变性方法。耳朵几何形状的特征是使用一组距离的外部和内部轮廓点。这组距离以及六个卵形参数被认为是图像的特征向量。为了测试该方法,创建了一个新的耳朵图像数据库。所提出的方法可以很好地识别正面平行视图,即使个人与相机或相机镜头的距离发生变化。
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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