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Partial Data Ear Recognition From One Sample per Person

机译:每人一个样本中的部分数据耳朵识别

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摘要

The relatively stable structure of the human ear makes it suitable for identification. The significance of ear recognition in human authentication has become prominent in recent years. A number of ear recognition systems and methods have achieved good performance under limited conditions in the laboratory. In real-world applications, however, such as passport identification and law enforcement, where usually only one sample per person (OSPP) is registered in the gallery, most of the existing ear recognition methods are paralyzed by partial data (e.g., pose variations and occlusion). To address such problems, we propose a weighted multikeypoint descriptor sparse representation-based classification method to use local features of ear images. By adding adaptive weights to all the keypoints on a query image, the intraclass variations are reduced. Besides, the interclass variations of the gallery samples are enlarged by purifying the multikeypoint dictionary. Experiments are carried out on two benchmark databases, i.e., the Indian Institute of Technology Delhi ear database and the University of Science and Technology Beijing ear image database III, to demonstrate the feasibility and effectiveness of the proposed method in dealing with partial data problems in ear recognition under the premise of OSPP in the gallery. The proposed method has achieved state-of-the-art recognition performance especially when the ear images are affected by pose variations and random occlusion.
机译:人耳的相对稳定的结构使其适合识别。近年来,人耳识别在人类认证中的重要性日益突出。在实验室中,在有限的条件下,许多耳朵识别系统和方法已经取得了良好的性能。但是,在现实世界中的应用中(例如护照识别和执法),通常在画廊中仅注册每人一个样本(OSPP),大多数现有的耳朵识别方法会被部分数据(例如,姿势变化和咬合)。为了解决这些问题,我们提出了一种基于加权多关键点描述符稀疏表示的分类方法,以利用耳朵图像的局部特征。通过向查询图像上的所有关键点添加自适应权重,可以减少类内差异。此外,通过净化多关键点字典扩大了画廊样本的类间差异。实验在两个基准数据库上进行,分别是印度理工学院德里耳朵数据库和北京科技大学北京耳朵图像数据库III,以证明该方法解决耳朵局部数据问题的可行性和有效性。在OSPP画廊的前提下获得认可。所提出的方法已经实现了最新的识别性能,尤其是当耳朵图像受到姿势变化和随机遮挡影响时。

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