耳朵识别的几何特征和特征向量特征

F. Kurniawan, M. Rahim, M. Khalil
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引用次数: 4

摘要

无约束耳生物识别技术是指具有不同视角和姿态的耳图像。这种情况对耳朵识别具有挑战性,因为一只耳朵有不同的表现。在本研究中,考虑了两个特征来处理无约束耳图像。这些特征称为几何特征和特征向量特征。在特征向量特征中,从六个区域提取耳朵,然后从每个区域计算特征向量。每个区域都有能力代表耳朵图像的特定部分。另一种特征被称为几何特征,它反映了耳朵图像的形状。利用了目前广泛使用的分类器,并对其进行了两个特征的训练。通过测量所提方法的结果来评估单一特征和融合特征之间的识别率。实验在北京科技大学收集的基准数据库上进行。结果表明,该方法能取得较好的效果。
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Geometrical and eigenvector features for ear recognition
Unconstrained ear biometric means an ear image that has variance in view and pose. This situation is challenging in ear recognition because one ear has various presentation. In this study, two features are considered to handle unconstrained ear image. The features called geometrical feature and eigenvector features. In eigenvector feature, the ear is extracted from six regions then the eigenvector is computed from each of those regions. Each region has capability to represent particular part of the ear image. Another feature is called geometrical feature that reflecting the shape of ear image. The widely used classifier is utilized and it trained with both features. Proposed method outcome is measured to evaluate the recognition rates among single features and fused features. The experiment is carried out on benchmark database collected by University of Science and Technology Beijing (USTB). It shows the proposed method can achieved promising result.
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