Chen Long, Mu Zhichun, Zhang Baoqing, Zhang Yi
School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing, China.
No.208 Institute, the Second Academy of CASIC, Beijing, China.
PLoS One. 2015 May 29;10(5):e0129505. doi: 10.1371/journal.pone.0129505. eCollection 2015.
Biometrics has the advantages of efficiency and convenience in identity authentication. As one of the most promising biometric-based methods, ear recognition has received broad attention and research. Previous studies have achieved remarkable performance with multiple samples per person (MSPP) in the gallery. However, most conventional methods are insufficient when there is only one sample per person (OSPP) available in the gallery. To solve the OSPP problem by maximizing the use of a single sample, this paper proposes a hybrid multi-keypoint descriptor sparse representation-based classification (MKD-SRC) ear recognition approach based on 2D and 3D information. Because most 3D sensors capture 3D data accessorizing the corresponding 2D data, it is sensible to use both types of information. First, the ear region is extracted from the profile. Second, keypoints are detected and described for both the 2D texture image and 3D range image. Then, the hybrid MKD-SRC algorithm is used to complete the recognition with only OSPP in the gallery. Experimental results on a benchmark dataset have demonstrated the feasibility and effectiveness of the proposed method in resolving the OSPP problem. A Rank-one recognition rate of 96.4% is achieved for a gallery of 415 subjects, and the time involved in the computation is satisfactory compared to conventional methods.
生物识别技术在身份认证方面具有高效和便捷的优势。作为最具前景的基于生物特征的方法之一,耳部识别受到了广泛关注和研究。以往的研究在图库中每人有多个样本(MSPP)的情况下取得了显著的性能。然而,当图库中每人只有一个样本(OSPP)时,大多数传统方法都存在不足。为了通过最大限度地利用单个样本解决OSPP问题,本文提出了一种基于二维和三维信息的混合多关键点描述符稀疏表示分类(MKD-SRC)耳部识别方法。由于大多数三维传感器在获取相应二维数据的同时也能捕获三维数据,因此使用这两种类型的信息是合理的。首先,从侧面提取耳部区域。其次,对二维纹理图像和三维距离图像都进行关键点检测和描述。然后,使用混合MKD-SRC算法在图库中只有OSPP的情况下完成识别。在一个基准数据集上的实验结果证明了该方法在解决OSPP问题上的可行性和有效性。对于包含415个受试者的图库,获得了96.4%的一级识别率,并且与传统方法相比,计算所涉及的时间也令人满意。