编码3D Gabor特征用于高光谱掌纹识别

L. Shen, Wenfeng Wu, Sen Jia, Zhenhua Guo
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引用次数: 8

摘要

相对于二维掌纹识别方面的丰硕成果,高光谱掌纹识别方面的研究文献相当有限。将高光谱数据的二维切片分别进行处理,然后在不同层次上进行融合进行掌纹识别,无法充分利用三维数据所包含的信息。本文提出了一种基于三维Gabor小波的空间域和频谱域特征同时提取方法。设计了一组不同频率和方向的三维Gabor小波,并与立方体进行卷积,提取空间-频谱联合域中的判别信息。对于三维立方体中的每个位置,确定产生最大响应的小波,并根据相位信息使用两位代码对响应进行编码。然后用汉明距离测量法计算两个超光谱立方体之间的相似度。利用香港-理大高光谱掌纹数据库采集的380只掌纹进行实验。结果表明,融合特征的精度大大优于单个小波的精度。低至4%的EER。
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Coding 3D Gabor Features for Hyperspectral Palmprint Recognition
Compared to the fruitful research outputs in 2D palm print recognition, the research in hyper spectral palm print recognition is quite limited in literature. When 2D slices of hyper spectral data was processed separately and then fused at different levels for palm recognition, the information contained in the 3D data is not fully exploited. We proposed a 3D Gabor wavelet based approach in this paper to extract features in spatial and spectrum domain simultaneously. A set of 3D Gabor wavelets with different frequencies and orientations were designed and convolved with the cube to extract discriminative information in the joint spatial-spectral domain. For each location in the 3D cube, the wavelet who produces the maximum response is identified and the response is coded using a two-bits code according to the phase information. The similarity between two hyper spectal cubes are then calculated using hamming distance measurement. The HK-PolyU Hyper spectral Palm print Database captured from 380 palms were used for experiments. Results show that the fused feature substantially outperformed the accuracy of individual wavelet. As low as 4% EER was achieved.
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