基于sift的人耳识别,融合颜色相似切片区域检测到的关键点

D. Kisku, H. Mehrotra, Phalguni Gupta, J. Sing
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引用次数: 51

摘要

耳部生物特征被认为是与虹膜和指纹特征相媲美的最可靠、最不变性的生物特征之一。在许多情况下,耳朵生物特征可以与面部生物特征在许多生理和纹理特征方面进行比较。本文提出了一种鲁棒高效的人耳识别系统,该系统采用尺度不变特征变换(SIFT)作为特征描述符对人耳图像进行结构表征。为了使其对用户认证的鲁棒性更强,只考虑颜色概率在一定范围内的区域进行不变SIFT特征提取,其中K-L散度用于保持颜色一致性。利用高斯混合模型建立耳肤色模型,并利用矢量量化对耳肤色模式进行聚类。最后,将K-L散度应用到GMM框架中,通过比较一对参考模型和探测耳图像的颜色相似度,记录指定范围内的颜色相似度。在耳图像的某些颜色切片区域进行分割后,提取SIFT关键点,并对提取的SIFT特征创建增广向量进行匹配,完成一对参考模型与探测耳图像的匹配。该方法在IITK Ear数据库上进行了测试,实验结果表明,在从颜色切片区域提取不变特征的同时,提高了识别精度,保持了系统的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIFT-based ear recognition by fusion of detected keypoints from color similarity slice regions
Ear biometric is considered as one of the most reliable and invariant biometrics characteristics in line with iris and fingerprint characteristics. In many cases, ear biometrics can be compared with face biometrics regarding many physiological and texture characteristics. In this paper, a robust and efficient ear recognition system is presented, which uses Scale Invariant Feature Transform (SIFT) as feature descriptor for structural representation of ear images. In order to make it more robust to user authentication, only the regions having color probabilities in a certain ranges are considered for invariant SIFT feature extraction, where the K-L divergence is used for keeping color consistency. Ear skin color model is formed by Gaussian mixture model and clustering the ear color pattern using vector quantization. Finally, K-L divergence is applied to the GMM framework for recording the color similarity in the specified ranges by comparing color similarity between a pair of reference model and probe ear images. After segmentation of ear images in some color slice regions, SIFT keypoints are extracted and an augmented vector of extracted SIFT features are created for matching, which is accomplished between a pair of reference model and probe ear images. The proposed technique has been tested on the IITK Ear database and the experimental results show improvements in recognition accuracy while invariant features are extracted from color slice regions to maintain the robustness of the system.
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